134 results on '"geographic object-based image analysis"'
Search Results
2. A new framework for GEOBIA: accurate individual plant extraction and detection using high-resolution RGB data from UAVs
- Author
-
Kaile Yang, Zhangxi Ye, Huan Liu, Xiaoyu Su, Chenhui Yu, Houxi Zhang, and Riwen Lai
- Subjects
crop management ,unmanned aerial vehicle ,remote sensing ,watershed segmentation ,geographic object-based image analysis ,Mathematical geography. Cartography ,GA1-1776 - Abstract
Citrus (Citrus reticulata), which is an important economic crop worldwide, is often managed in a labor-intensive and inefficient manner in developing countries, thereby necessitating more rapid and accurate alternatives to field surveys for improved crop management. In this study, we propose a novel method for individual tree segmentation from unmanned aerial vehicle remote sensing (RS) using a combination of geographic object-based image analysis (GEOBIA) and layer-adaptive Euclidean distance transformation-based watershed segmentation (LAEDT-WS). First, we use a GEOBIA support vector machine classifier that is optimized for features and parameters to identify the boundaries of citrus tree canopies accurately by generating mask images. Thereafter, our LAEDT workflow separates connected canopies and facilitates the accurate segmentation of individual canopies using WS. Our method exhibited an F1-score improvement of 10.75% compared to the traditional WS method based on the canopy height model. Furthermore, it achieved 0.01% and 1.38% higher F1-scores than the state-of-the-art deep learning detection networks YOLOX and YOLACT, respectively, on the test plot. Our method can be extended to detect larger-scale or more complex structured crops or economic plants by introducing more finely detailed and transferable RS images, such as high-resolution or LiDAR-derived images, to improve the mask base map.
- Published
- 2023
- Full Text
- View/download PDF
3. Applying High-Resolution Satellite and UAS Imagery for Detecting Coldwater Inputs in Temperate Streams of the Iowa Driftless Region.
- Author
-
Mishra, Niti B., Siepker, Michael J., and Simmons, Greg
- Subjects
- *
REMOTE-sensing images , *SNOW cover , *AQUATIC resources , *WATER temperature , *ICE streams , *SEA ice drift , *FOREST canopy gaps - Abstract
Coldwater streams are crucial habitats for many biota including Salmonidae and Cottidae species that are unable to tolerate warmer water temperatures. Accurate classification of coldwater streams is essential for their conservation, restoration, and management, especially in light of increasing human disturbance and climate change. Coldwater streams receive cooler groundwater inputs and, as a result, typically remain ice-free during the winter. Based on this empirical thermal evidence, we examined the potential of very high-resolution (VHR) satellite and uncrewed aerial system (UAS) imagery to (i) detect coldwater streams using semi-automatic classification versus visual interpretation approaches, (ii) examine the physical factors that contribute to inaccuracies in detecting coldwater habitats, and (iii) use the results to identify inaccuracies in existing thermal stream classification datasets and recommend coverage updates. Due to complex site conditions, semi-automated classification was time consuming and produced low mapping accuracy, while visual interpretation produced better results. VHR imagery detected only the highest quality coldwater streams while lower quality streams that still met the thermal and biological criteria to be classified as coldwater remained undetected. Complex stream and site variables (narrow stream width, canopy cover, terrain shadow, stream covered by ice and drifting snow), image quality (spatial resolution, solar elevation angle), and environmental conditions (ambient temperature prior to image acquisition) make coldwater detection challenging; however, UAS imagery is uniquely suited for mapping very narrow streams and can bridge the gap between field data and satellite imagery. Field-collected water temperatures and stream habitat and fish community inventories may be necessary to overcome these challenges and allow validation of remote sensing results. We detected >30 km of coldwater streams that are currently misclassified as warmwater. Overall, visual interpretation of VHR imagery it is a relatively quick and inexpensive approach to detect the location and extent of coldwater stream resources and could be used to develop field monitoring programs to confirm location and extent of coldwater aquatic resources. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
4. Deep learning for land use and land cover classification from the Ecuadorian Paramo.
- Author
-
Marco Castelo-Cabay, Jose A. Piedra-Fernandez, and Rosa Ayala
- Subjects
classification ,land use and land cover ,pixel-based image analysis ,geographic object-based image analysis ,deep neural network ,Mathematical geography. Cartography ,GA1-1776 - Abstract
The paramo, plays an important role in our ecosystems as They balance the water resources and can retain substantial quantities of carbon. This research was carried out in the province of Tungurahua, specifically the Quero district. The aim is to develop a classification of the land use land cover (LULC) in the paramo using satellite imagery using several classifiers and determine which one obtains the best performance, for which three different approaches were applied: Pixel-Based Image Analysis (PBIA), Geographic Object-Based Image Analysis (GEOBIA), and a Deep Neural Network (DNN). Various parameters were used, such as the Normalized Difference Vegetation Index (NDVI), the Bare Soil Index (BSI), texture, altitude, and slope. Seven classes were used: paramo, pasture, crops, herbaceous vegetation, urban, shrubrainland, and forestry plantations. The data was obtained with the help of onsite technical experts, using geo-referencing and reference maps. Among the models used the highest-ranked was DNN with an overall precision of 87.43%, while for the paramo class specifically, GEOBIA reached a precision of 95%.
- Published
- 2022
- Full Text
- View/download PDF
5. Characterisation of Banana Plant Growth Using High-Spatiotemporal-Resolution Multispectral UAV Imagery.
- Author
-
Aeberli, Aaron, Phinn, Stuart, Johansen, Kasper, Robson, Andrew, and Lamb, David W.
- Subjects
- *
PLANT phenology , *BANANAS , *PLANT growth , *CROWNS (Botany) , *PLANT canopies , *PLANT morphology , *FARMERS - Abstract
The determination of key phenological growth stages of banana plantations, such as flower emergence and plant establishment, is difficult due to the asynchronous growth habit of banana plants. Identifying phenological events assists growers in determining plant maturity, and harvest timing and guides the application of time-specific crop inputs. Currently, phenological monitoring requires repeated manual observations of individual plants' growth stages, which is highly laborious, time-inefficient, and requires the handling and integration of large field-based data sets. The ability of growers to accurately forecast yield is also compounded by the asynchronous growth of banana plants. Satellite remote sensing has proved effective in monitoring spatial and temporal crop phenology in many broadacre crops. However, for banana crops, very high spatial and temporal resolution imagery is required to enable individual plant level monitoring. Unoccupied aerial vehicle (UAV)-based sensing technologies provide a cost-effective solution, with the potential to derive information on health, yield, and growth in a timely, consistent, and quantifiable manner. Our research explores the ability of UAV-derived data to track temporal phenological changes of individual banana plants from follower establishment to harvest. Individual plant crowns were delineated using object-based image analysis, with calculations of canopy height and canopy area producing strong correlations against corresponding ground-based measures of these parameters (R2 of 0.77 and 0.69 respectively). A temporal profile of canopy reflectance and plant morphology for 15 selected banana plants were derived from UAV-captured multispectral data over 21 UAV campaigns. The temporal profile was validated against ground-based determinations of key phenological growth stages. Derived measures of minimum plant height provided the strongest correlations to plant establishment and harvest, whilst interpolated maxima of normalised difference vegetation index (NDVI) best indicated flower emergence. For pre-harvest yield forecasting, the Enhanced Vegetation Index 2 provided the strongest relationship (R2 = 0.77) from imagery captured near flower emergence. These findings demonstrate that UAV-based multitemporal crop monitoring of individual banana plants can be used to determine key growing stages of banana plants and offer pre-harvest yield forecasts. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
6. A new framework for GEOBIA: accurate individual plant extraction and detection using high-resolution RGB data from UAVs.
- Author
-
Yang, Kaile, Ye, Zhangxi, Liu, Huan, Su, Xiaoyu, Yu, Chenhui, Zhang, Houxi, and Lai, Riwen
- Subjects
- *
MANDARIN orange , *CROP management , *CROPS , *REMOTE sensing , *SUPPORT vector machines , *DRONE aircraft - Abstract
Citrus (Citrus reticulata), which is an important economic crop worldwide, is often managed in a labor-intensive and inefficient manner in developing countries, thereby necessitating more rapid and accurate alternatives to field surveys for improved crop management. In this study, we propose a novel method for individual tree segmentation from unmanned aerial vehicle remote sensing (RS) using a combination of geographic object-based image analysis (GEOBIA) and layer-adaptive Euclidean distance transformation-based watershed segmentation (LAEDT-WS). First, we use a GEOBIA support vector machine classifier that is optimized for features and parameters to identify the boundaries of citrus tree canopies accurately by generating mask images. Thereafter, our LAEDT workflow separates connected canopies and facilitates the accurate segmentation of individual canopies using WS. Our method exhibited an F1-score improvement of 10.75% compared to the traditional WS method based on the canopy height model. Furthermore, it achieved 0.01% and 1.38% higher F1-scores than the state-of-the-art deep learning detection networks YOLOX and YOLACT, respectively, on the test plot. Our method can be extended to detect larger-scale or more complex structured crops or economic plants by introducing more finely detailed and transferable RS images, such as high-resolution or LiDAR-derived images, to improve the mask base map. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
7. On the Choice of the Most Suitable Period to Map Hill Lakes via Spectral Separability and Object-Based Image Analyses.
- Author
-
Maltese, Antonino
- Subjects
- *
IMAGE analysis , *LAKES , *REMOTE-sensing images , *SPATIAL resolution - Abstract
Technological advances in Earth observation made images characterized by high spatial and temporal resolutions available, nevertheless bringing with them the radiometric heterogeneity of small geographical entities, often also changing in time. Among small geographical entities, hill lakes exhibit a widespread distribution, and their census is sometimes partial or shows unreliable data. High resolution and heterogeneity have boosted the development of geographic object-based image analysis algorithms. This research analyzes which is the most suitable period for acquiring satellite images to identify and delimitate hill lakes. This is achieved by analyzing the spectral separability of the surface reflectance of hill lakes from surrounding bare or vegetated soils and by implementing a semiautomatic procedure to enhance the segmentation phase of a GEOBIA algorithm. The proposed procedure was applied to high spatial resolution satellite images acquired in two different climate periods (arid and temperate), corresponding to dry and vegetative seasons. The segmentation parameters were tuned by minimizing an under- and oversegmentation metric on surfaces and perimeters of hill lakes selected as the reference. The separability of hill lakes from their surrounding was evaluated using Euclidean and divergence metrics both in the arid and temperate periods. The classification accuracy was evaluated by calculating the error matrix and normalized error matrix. Classes' reflectances in the image acquired in the arid period show the highest average separability (3–4 higher than in the temperate one). The segmentation based on the reference areas performs more than that based on the reference perimeters (metric ≈ 20% lower). Both separability metrics and classification accuracies indicate that images acquired in the arid period are more suitable than temperate ones to map hill lakes. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
8. Applying High-Resolution Satellite and UAS Imagery for Detecting Coldwater Inputs in Temperate Streams of the Iowa Driftless Region
- Author
-
Niti B. Mishra, Michael J. Siepker, and Greg Simmons
- Subjects
coldwater streams ,stream temperature ,satellite imagery ,UAS imagery ,surface water—ground water interactions ,geographic object-based image analysis ,Science - Abstract
Coldwater streams are crucial habitats for many biota including Salmonidae and Cottidae species that are unable to tolerate warmer water temperatures. Accurate classification of coldwater streams is essential for their conservation, restoration, and management, especially in light of increasing human disturbance and climate change. Coldwater streams receive cooler groundwater inputs and, as a result, typically remain ice-free during the winter. Based on this empirical thermal evidence, we examined the potential of very high-resolution (VHR) satellite and uncrewed aerial system (UAS) imagery to (i) detect coldwater streams using semi-automatic classification versus visual interpretation approaches, (ii) examine the physical factors that contribute to inaccuracies in detecting coldwater habitats, and (iii) use the results to identify inaccuracies in existing thermal stream classification datasets and recommend coverage updates. Due to complex site conditions, semi-automated classification was time consuming and produced low mapping accuracy, while visual interpretation produced better results. VHR imagery detected only the highest quality coldwater streams while lower quality streams that still met the thermal and biological criteria to be classified as coldwater remained undetected. Complex stream and site variables (narrow stream width, canopy cover, terrain shadow, stream covered by ice and drifting snow), image quality (spatial resolution, solar elevation angle), and environmental conditions (ambient temperature prior to image acquisition) make coldwater detection challenging; however, UAS imagery is uniquely suited for mapping very narrow streams and can bridge the gap between field data and satellite imagery. Field-collected water temperatures and stream habitat and fish community inventories may be necessary to overcome these challenges and allow validation of remote sensing results. We detected >30 km of coldwater streams that are currently misclassified as warmwater. Overall, visual interpretation of VHR imagery it is a relatively quick and inexpensive approach to detect the location and extent of coldwater stream resources and could be used to develop field monitoring programs to confirm location and extent of coldwater aquatic resources.
- Published
- 2023
- Full Text
- View/download PDF
9. Effect of Image-Processing Routines on Geographic Object-Based Image Analysis for Mapping Glacier Surface Facies from Svalbard and the Himalayas.
- Author
-
Jawak, Shridhar D., Wankhede, Sagar F., Luis, Alvarinho J., and Balakrishna, Keshava
- Subjects
- *
IMAGE analysis , *FACIES , *ALPINE glaciers , *GLACIERS , *DATA mining , *REMOTE sensing , *SPATIAL resolution , *HYPERSPECTRAL imaging systems - Abstract
Advancements in remote sensing have led to the development of Geographic Object-Based Image Analysis (GEOBIA). This method of information extraction focuses on segregating correlated pixels into groups for easier classification. This is of excellent use in analyzing very-high-resolution (VHR) data. The application of GEOBIA for glacier surface mapping, however, necessitates multiple scales of segmentation and input of supportive ancillary data. The mapping of glacier surface facies presents a unique problem to GEOBIA on account of its separable but closely matching spectral characteristics and often disheveled surface. Debris cover can induce challenges and requires additions of slope, temperature, and short-wave infrared data as supplements to enable efficient mapping. Moreover, as the influence of atmospheric corrections and image sharpening can derive variations in the apparent surface reflectance, a robust analysis of the effects of these processing routines in a GEOBIA environment is lacking. The current study aims to investigate the impact of three atmospheric corrections, Dark Object Subtraction (DOS), Quick Atmospheric Correction (QUAC), and Fast Line-of-Sight Atmospheric Analysis of Hypercubes (FLAASH), and two pansharpening methods, viz., Gram–Schmidt (GS) and Hyperspherical Color Sharpening (HCS), on the classification of surface facies using GEOBIA. This analysis is performed on VHR WorldView-2 imagery of selected glaciers in Ny-Ålesund, Svalbard, and Chandra–Bhaga basin, Himalaya. The image subsets are segmented using multiresolution segmentation with constant parameters. Three rule sets are defined: rule set 1 utilizes only spectral information, rule set 2 contains only spatial and contextual features, and rule set 3 combines both spatial and spectral attributes. Rule set 3 performs the best across all processing schemes with the highest overall accuracy, followed by rule set 1 and lastly rule set 2. This trend is observed for every image subset. Among the atmospheric corrections, DOS displays consistent performance and is the most reliable, followed by QUAC and FLAASH. Pansharpening improved overall accuracy and GS performed better than HCS. The study reports robust segmentation parameters that may be transferable to other VHR-based glacier surface facies mapping applications. The rule sets are adjusted across the processing schemes to adjust to the change in spectral characteristics introduced by the varying routines. The results indicate that GEOBIA for glacier surface facies mapping may be less prone to the differences in spectral signatures introduced by different atmospheric corrections but may respond well to increasing spatial resolution. The study highlighted the role of spatial attributes for mapping fine features, and in combination with appropriate spectral features may enhance thematic classification. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
10. Characterisation of Banana Plant Growth Using High-Spatiotemporal-Resolution Multispectral UAV Imagery
- Author
-
Aaron Aeberli, Stuart Phinn, Kasper Johansen, Andrew Robson, and David W. Lamb
- Subjects
unoccupied aerial vehicle ,UAV ,banana plant ,geographic object-based image analysis ,phenology ,yield ,Science - Abstract
The determination of key phenological growth stages of banana plantations, such as flower emergence and plant establishment, is difficult due to the asynchronous growth habit of banana plants. Identifying phenological events assists growers in determining plant maturity, and harvest timing and guides the application of time-specific crop inputs. Currently, phenological monitoring requires repeated manual observations of individual plants’ growth stages, which is highly laborious, time-inefficient, and requires the handling and integration of large field-based data sets. The ability of growers to accurately forecast yield is also compounded by the asynchronous growth of banana plants. Satellite remote sensing has proved effective in monitoring spatial and temporal crop phenology in many broadacre crops. However, for banana crops, very high spatial and temporal resolution imagery is required to enable individual plant level monitoring. Unoccupied aerial vehicle (UAV)-based sensing technologies provide a cost-effective solution, with the potential to derive information on health, yield, and growth in a timely, consistent, and quantifiable manner. Our research explores the ability of UAV-derived data to track temporal phenological changes of individual banana plants from follower establishment to harvest. Individual plant crowns were delineated using object-based image analysis, with calculations of canopy height and canopy area producing strong correlations against corresponding ground-based measures of these parameters (R2 of 0.77 and 0.69 respectively). A temporal profile of canopy reflectance and plant morphology for 15 selected banana plants were derived from UAV-captured multispectral data over 21 UAV campaigns. The temporal profile was validated against ground-based determinations of key phenological growth stages. Derived measures of minimum plant height provided the strongest correlations to plant establishment and harvest, whilst interpolated maxima of normalised difference vegetation index (NDVI) best indicated flower emergence. For pre-harvest yield forecasting, the Enhanced Vegetation Index 2 provided the strongest relationship (R2 = 0.77) from imagery captured near flower emergence. These findings demonstrate that UAV-based multitemporal crop monitoring of individual banana plants can be used to determine key growing stages of banana plants and offer pre-harvest yield forecasts.
- Published
- 2023
- Full Text
- View/download PDF
11. On the Choice of the Most Suitable Period to Map Hill Lakes via Spectral Separability and Object-Based Image Analyses
- Author
-
Antonino Maltese
- Subjects
regionalization ,geographic object-based image analysis ,Euclidean distance ,divergence ,hill lakes ,Science - Abstract
Technological advances in Earth observation made images characterized by high spatial and temporal resolutions available, nevertheless bringing with them the radiometric heterogeneity of small geographical entities, often also changing in time. Among small geographical entities, hill lakes exhibit a widespread distribution, and their census is sometimes partial or shows unreliable data. High resolution and heterogeneity have boosted the development of geographic object-based image analysis algorithms. This research analyzes which is the most suitable period for acquiring satellite images to identify and delimitate hill lakes. This is achieved by analyzing the spectral separability of the surface reflectance of hill lakes from surrounding bare or vegetated soils and by implementing a semiautomatic procedure to enhance the segmentation phase of a GEOBIA algorithm. The proposed procedure was applied to high spatial resolution satellite images acquired in two different climate periods (arid and temperate), corresponding to dry and vegetative seasons. The segmentation parameters were tuned by minimizing an under- and oversegmentation metric on surfaces and perimeters of hill lakes selected as the reference. The separability of hill lakes from their surrounding was evaluated using Euclidean and divergence metrics both in the arid and temperate periods. The classification accuracy was evaluated by calculating the error matrix and normalized error matrix. Classes’ reflectances in the image acquired in the arid period show the highest average separability (3–4 higher than in the temperate one). The segmentation based on the reference areas performs more than that based on the reference perimeters (metric ≈ 20% lower). Both separability metrics and classification accuracies indicate that images acquired in the arid period are more suitable than temperate ones to map hill lakes.
- Published
- 2023
- Full Text
- View/download PDF
12. Deep learning for land use and land cover classification from the Ecuadorian Paramo.
- Author
-
Castelo-Cabay, Marco, Piedra-Fernandez, Jose A., and Ayala, Rosa
- Subjects
- *
DEEP learning , *ZONING , *NORMALIZED difference vegetation index , *LAND use , *ECOSYSTEMS , *LAND cover , *IMAGE analysis - Abstract
The paramo, plays an important role in our ecosystems as They balance the water resources and can retain substantial quantities of carbon. This research was carried out in the province of Tungurahua, specifically the Quero district. The aim is to develop a classification of the land use land cover (LULC) in the paramo using satellite imagery using several classifiers and determine which one obtains the best performance, for which three different approaches were applied: Pixel-Based Image Analysis (PBIA), Geographic Object-Based Image Analysis (GEOBIA), and a Deep Neural Network (DNN). Various parameters were used, such as the Normalized Difference Vegetation Index (NDVI), the Bare Soil Index (BSI), texture, altitude, and slope. Seven classes were used: paramo, pasture, crops, herbaceous vegetation, urban, shrubrainland, and forestry plantations. The data was obtained with the help of onsite technical experts, using geo-referencing and reference maps. Among the models used the highest-ranked was DNN with an overall precision of 87.43%, while for the paramo class specifically, GEOBIA reached a precision of 95%. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
13. Multispectral Characteristics of Glacier Surface Facies (Chandra-Bhaga Basin, Himalaya, and Ny-Ålesund, Svalbard) through Investigations of Pixel and Object-Based Mapping Using Variable Processing Routines
- Author
-
Shridhar D. Jawak, Sagar F. Wankhede, Alvarinho J. Luis, and Keshava Balakrishna
- Subjects
surface facies of glaciers ,pixel-based image analysis ,geographic object-based image analysis ,atmospheric corrections ,pansharpening ,image processing routines ,Science - Abstract
Fundamental image processing methods, such as atmospheric corrections and pansharpening, influence the signal of the pixel. This morphs the spectral signature of target features causing a change in both the final spectra and the way different mapping methods may assign thematic classes. In the current study, we aim to identify the variations induced by popular image processing methods in the spectral reflectance and final thematic maps of facies. To this end, we have tested three different atmospheric corrections: (a) Quick Atmospheric Correction (QUAC), (b) Dark Object Subtraction (DOS), and (c) Fast Line-of-Sight Atmospheric Analysis of Hypercubes (FLAASH), and two pansharpening methods: (a) Hyperspherical Color Sharpening (HCS) and (b) Gram–Schmidt (GS). WorldView-2 and WorldView-3 satellite images over Chandra-Bhaga Basin, Himalaya, and Ny-Ålesund, Svalbard are tested via spectral subsets in traditional (BGRN1), unconventional (CYRN2), visible to near-infrared (VNIR), and the complete available spectrum (VNIR_SWIR). Thematic mapping was comparatively performed using 12 pixel-based (PBIA) algorithms and 3 object-based (GEOBIA) rule sets. Thus, we test the impact of varying image processing routines, effectiveness of specific spectral bands, utility of PBIA, and versatility of GEOBIA for mapping facies. Our findings suggest that the image processing routines exert an extreme impact on the end spectral reflectance. DOS delivers the most reliable performance (overall accuracy = 0.64) averaged across all processing schemes. GEOBIA delivers much higher accuracy when the QUAC correction is employed and if the image is enhanced by GS pansharpening (overall accuracy = 0.79). SWIR bands have not enhanced the classification results and VNIR band combination yields superior performance (overall accuracy = 0.59). The maximum likelihood classifier (PBIA) delivers consistent and reliable performance (overall accuracy = 0.61) across all processing schemes and can be used after DOS correction without pansharpening, as it deteriorates spectral information. GEOBIA appears to be robust against modulations in atmospheric corrections but is enhanced by pansharpening. When utilizing GEOBIA, we find that a combination of spatial and spectral object features (rule set 3) delivers the best performance (overall accuracy = 0.86), rather than relying only on spectral (rule set 1) or spatial (rule set 2) object features. The multiresolution segmentation parameters used here may be transferable to other very high resolution (VHR) VNIR mapping of facies as it yielded consistent objects across all processing schemes.
- Published
- 2022
- Full Text
- View/download PDF
14. Effect of Image-Processing Routines on Geographic Object-Based Image Analysis for Mapping Glacier Surface Facies from Svalbard and the Himalayas
- Author
-
Shridhar D. Jawak, Sagar F. Wankhede, Alvarinho J. Luis, and Keshava Balakrishna
- Subjects
geographic object-based image analysis ,atmospheric correction ,pansharpening ,WorldView-2 ,Ny-Ålesund ,Chandra–Bhaga basin ,Science - Abstract
Advancements in remote sensing have led to the development of Geographic Object-Based Image Analysis (GEOBIA). This method of information extraction focuses on segregating correlated pixels into groups for easier classification. This is of excellent use in analyzing very-high-resolution (VHR) data. The application of GEOBIA for glacier surface mapping, however, necessitates multiple scales of segmentation and input of supportive ancillary data. The mapping of glacier surface facies presents a unique problem to GEOBIA on account of its separable but closely matching spectral characteristics and often disheveled surface. Debris cover can induce challenges and requires additions of slope, temperature, and short-wave infrared data as supplements to enable efficient mapping. Moreover, as the influence of atmospheric corrections and image sharpening can derive variations in the apparent surface reflectance, a robust analysis of the effects of these processing routines in a GEOBIA environment is lacking. The current study aims to investigate the impact of three atmospheric corrections, Dark Object Subtraction (DOS), Quick Atmospheric Correction (QUAC), and Fast Line-of-Sight Atmospheric Analysis of Hypercubes (FLAASH), and two pansharpening methods, viz., Gram–Schmidt (GS) and Hyperspherical Color Sharpening (HCS), on the classification of surface facies using GEOBIA. This analysis is performed on VHR WorldView-2 imagery of selected glaciers in Ny-Ålesund, Svalbard, and Chandra–Bhaga basin, Himalaya. The image subsets are segmented using multiresolution segmentation with constant parameters. Three rule sets are defined: rule set 1 utilizes only spectral information, rule set 2 contains only spatial and contextual features, and rule set 3 combines both spatial and spectral attributes. Rule set 3 performs the best across all processing schemes with the highest overall accuracy, followed by rule set 1 and lastly rule set 2. This trend is observed for every image subset. Among the atmospheric corrections, DOS displays consistent performance and is the most reliable, followed by QUAC and FLAASH. Pansharpening improved overall accuracy and GS performed better than HCS. The study reports robust segmentation parameters that may be transferable to other VHR-based glacier surface facies mapping applications. The rule sets are adjusted across the processing schemes to adjust to the change in spectral characteristics introduced by the varying routines. The results indicate that GEOBIA for glacier surface facies mapping may be less prone to the differences in spectral signatures introduced by different atmospheric corrections but may respond well to increasing spatial resolution. The study highlighted the role of spatial attributes for mapping fine features, and in combination with appropriate spectral features may enhance thematic classification.
- Published
- 2022
- Full Text
- View/download PDF
15. Center pivot field delineation and mapping: A satellite-driven object-based image analysis approach for national scale accounting.
- Author
-
Johansen, Kasper, Lopez, Oliver, Tu, Yu-Hsuan, Li, Ting, and McCabe, Matthew Francis
- Subjects
- *
IMAGE analysis , *NATIONAL income accounting , *NATIONAL account systems , *WATER requirements for crops , *MIDDLE East respiratory syndrome , *WATER management , *GOLF course maintenance - Abstract
[Display omitted] Center pivot irrigation systems are used to enhance crop production in many countries around the world. Establishing the location and extent of such fields provides information that assists in describing a range of agricultural metrics, including crop identification, yield forecasts, monitoring of irrigation requirements and crop water use, as well as supporting national and regional auditing, licensing and compliance efforts. However, detailed information on the number, extent and changing dynamics of agricultural fields is often lacking in many countries: nowhere more so than in developing regions. To address this lack, we performed a national scale accounting of center pivot fields in Saudi Arabia, using a three year multi-temporal analysis of Landsat-8 satellite data. A geographic object-based image analysis approach was developed based on five 50 × 50 km sub-areas extracted from Landsat data for the year 2015, and applied to delineate individual center pivot fields at a national scale for 2013, 2014 and 2015. The extent of fields was determined via a map of the annual maximum Normalized Difference Vegetation Index (NDVI), while a 15 m spatial resolution map of annual panchromatic band minimums was used to produce an edge detection layer to delineate individual adjoining fields. Amongst a range of classification parameters that were included in the object-based mapping approach, shape information, such as the center pivot field length, length:width ratio, and elliptic fit, were identified as critical parameters. Applying the rule-set that was developed from the five 50 × 50 km sub-regions to the national scale resulted in the identification of 36,052 (11,103 km2), 38,114 (11,902 km2), and 37,254 (11,555 km2) individual fields in 2013, 2014, and 2015, respectively. Approximately 94% of these fields were correctly detected, while their individually measured area was mapped with >95% combined accuracy for fields >0.225 km2 when evaluated against manually delineated fields. Smaller center pivot fields, and specifically those adjoining neighbouring fields, had lower area mapping accuracies (>91% in 75% of cases). The object-based approach allowed a national scale and multi-temporal assessment of center pivot field delineation and mapping, affording new insights into agricultural practice and providing a methodological basis for examining the impact of water management and related policy initiatives, amongst many other potential applications. Apart from filling a clear knowledge gap in Saudi Arabia, the approach has the potential to be expanded elsewhere: particularly to similar locations within the Middle East and North Africa. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
16. Predicting catchment-scale methane fluxes with multi-source remote sensing.
- Author
-
Räsänen, Aleksi, Manninen, Terhikki, Korkiakoski, Mika, Lohila, Annalea, and Virtanen, Tarmo
- Subjects
REMOTE sensing ,LAND cover ,DIGITAL elevation models ,FLUX (Energy) ,SOIL topography - Abstract
Context: Spatial patterns of CH
4 fluxes can be modeled with remotely sensed data representing land cover, soil moisture and topography. Spatially extensive CH4 flux measurements conducted with portable analyzers have not been previously upscaled with remote sensing. Objectives: How well can the CH4 fluxes be predicted with plot-based vegetation measures and remote sensing? How does the predictive skill of the model change when using different combinations of predictor variables? Methods: We measured CH4 fluxes in 279 plots in a 12.4 km2 peatland-forest-mosaic landscape in Pallas area, northern Finland in July 2019. We compared 20 different CH4 flux maps produced with vegetation field data and remote sensing data including Sentinel-1, Sentinel-2 and digital terrain model (DTM). Results: The landscape acted as a net source of CH4 (253–502 µg m−2 h−1 ) and the proportion of source areas varied considerably between maps (12–50%). The amount of explained variance was high in CH4 regressions (59–76%, nRMSE 8–10%). Regressions including remote sensing predictors had better performance than regressions with plot-based vegetation predictors. The most important remote sensing predictors included VH-polarized Sentinel-1 features together with topographic wetness index and other DTM features. Spatial patterns were most accurately predicted when the landscape was divided into sinks and sources with remote sensing-based classifications, and the fluxes were modeled for sinks and sources separately. Conclusions: CH4 fluxes can be predicted accurately with multi-source remote sensing in northern boreal peatland landscapes. High spatial resolution remote sensing-based maps constrain uncertainties related to CH4 fluxes and their spatial patterns. [ABSTRACT FROM AUTHOR]- Published
- 2021
- Full Text
- View/download PDF
17. Optimizing the Scale of Observation for Intertidal Habitat Classification through Multiscale Analysis
- Author
-
Michael C. Espriella and Vincent Lecours
- Subjects
UAS ,multiscale ,geographic object-based image analysis ,oyster ,habitat mapping ,scale ,Motor vehicles. Aeronautics. Astronautics ,TL1-4050 - Abstract
Monitoring intertidal habitats, such as oyster reefs, salt marshes, and mudflats, is logistically challenging and often cost- and time-intensive. Remote sensing platforms, such as unoccupied aircraft systems (UASs), present an alternative to traditional approaches that can quickly and inexpensively monitor coastal areas. Despite the advantages offered by remote sensing systems, challenges remain concerning the best practices to collect imagery to study these ecosystems. One such challenge is the range of spatial resolutions for imagery that is best suited for intertidal habitat monitoring. Very fine imagery requires more collection and processing times. However, coarser imagery may not capture the fine-scale patterns necessary to understand relevant ecological processes. This study took UAS imagery captured along the Gulf of Mexico coastline in Florida, USA, and resampled the derived orthomosaic and digital surface model to resolutions ranging from 3 to 31 cm, which correspond to the spatial resolutions achievable by other means (e.g., aerial photography and certain commercial satellites). A geographic object-based image analysis (GEOBIA) workflow was then applied to datasets at each resolution to classify mudflats, salt marshes, oyster reefs, and water. The GEOBIA process was conducted within R, making the workflow open-source. Classification accuracies were largely consistent across the resolutions, with overall accuracies ranging from 78% to 82%. The results indicate that for habitat mapping applications, very fine resolutions may not provide information that increases the discriminative power of the classification algorithm. Multiscale classifications were also conducted and produced higher accuracies than single-scale workflows, as well as a measure of uncertainty between classifications.
- Published
- 2022
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18. Using GeoEye-1 Imagery for Multi-Temporal Object-Based Detection of Canegrub Damage in Sugarcane Fields in Queensland, Australia
- Author
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Kasper Johansen, Nader Sallam, Andrew Robson, Peter Samson, Keith Chandler, Lisa Derby, Allen Eaton, and Jillian Jennings
- Subjects
geographic object-based image analysis ,dermolepida ,sugarcane ,geoeye-1 ,queensland australia ,damage mapping ,Mathematical geography. Cartography ,GA1-1776 ,Environmental sciences ,GE1-350 - Abstract
The greyback canegrub (Dermolepida albohirtum) is the main pest of sugarcane crops in all cane-growing regions between Mossman (16.5°S) and Sarina (21.5°S) in Queensland, Australia. In previous years, high infestations have cost the industry up to $40 million. However, identifying damage in the field is difficult due to the often impenetrable nature of the sugarcane crop. Satellite imagery offers a feasible means of achieving this by examining the visual characteristics of stool tipping, changed leaf color, and exposure of soil in damaged areas. The objective of this study was to use geographic object-based image analysis (GEOBIA) and high-spatial resolution GeoEye-1 satellite imagery for three years to map canegrub damage and develop two mapping approaches suitable for risk mapping. The GEOBIA mapping approach for canegrub damage detection was evaluated over three selected study sites in Queensland, covering a total of 254 km2 and included five main steps developed in the eCognition Developer software. These included: (1) initial segmentation of sugarcane block boundaries; (2) classification and subsequent omission of fallow/harvested fields, tracks, and other non-sugarcane features within the block boundaries; (3) identification of likely canegrub-damaged areas with low NDVI values and high levels of image texture within each block; (4) the further refining of canegrub damaged areas to low, medium, and high likelihood; and (5) risk classification. The validation based on field observations of canegrub damage at the time of the satellite image capture yielded producer’s accuracies between 75% and 98.7%, depending on the study site. Error of commission occurred in some cases due to sprawling, drainage issues, wind, weed, and pig damage. The two developed risk mapping approaches were based on the results of the canegrub damage detection. This research will improve decision making by growers affected by canegrub damage.
- Published
- 2018
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19. Object-specific optimization of hierarchical multiscale segmentations for high-spatial resolution remote sensing images.
- Author
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Zhang, Xueliang, Xiao, Pengfeng, and Feng, Xuezhi
- Subjects
- *
REMOTE sensing , *IMAGE analysis , *IMAGE , *OPTICAL remote sensing - Abstract
Accurate segmentation of high-spatial resolution remote sensing images remains a challenging problem for geographic object-based image analysis. An object-specific optimization method for hierarchical multiscale segmentations is proposed in this study by fusing multiple segmentations into an optimized segmentation with specific consideration of each object. Based on a segment tree model representing hierarchical multiscale segmentations, the framework of object-specific optimization is achieved by identifying and fusing the meaningful nodes in each path originating from a leaf node. Within the optimization framework, an optimization measure for identifying meaningful node is designed according to the maximum change of homogeneity in a path. The proposed optimization method is experimentally validated to hold the advantage of improving segmentation accuracy by the manner of object-specific optimization as well as the potential of automatically producing optimized segmentation for successive object-based analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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- View/download PDF
20. Object-based crop classification in Hetao irrigation zone by using deep learning and region merging optimization.
- Author
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Su, Tengfei and Zhang, Shengwei
- Subjects
- *
DEEP learning , *OPTIMIZATION algorithms , *TRANSFORMER models , *IRRIGATION , *IMAGE analysis , *PRECISION farming - Abstract
• Combined GEOBIA with deep learning by using imagette classification network. • Developed a deep classifier with multi-scale CNN and transformer modules. • Proposed an optimization approach to improve segmentation and classification. • Found serious negative effects of over-segmentation error on deep classifier. • Tested the feasibility of the proposed method in local area with a small dataset. crop classification is conducive to precision agriculture. Due to the cost of high-resolution image collection, it is uneasy to conduct crop classification in remotely sensed scenes using deep networks, which have become increasingly popular in remote sensing. This work combines geographical-based image analysis (GEOBIA) with deep learning for crop classification in a small area. An image classifier network is designed by using multi-scale CNN and transformer modules. The network input is an image transformed from a segment obtained using multi-resolution segmentation (MRS). An iterative optimization framework is developed to correct the segments with under-segmentation errors (USE). Two scenes of high-resolution images are employed for the experiment. The proposed optimization algorithm leads to superior performance to competitors. By using the proposed classifier network as a baseline, the optimization approach can improve overall accuracy (OA) by 4.33 % and 1.29 % respectively for the first and second dataset. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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21. Detection of Banana Plants Using Multi-Temporal Multispectral UAV Imagery
- Author
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Aaron Aeberli, Kasper Johansen, Andrew Robson, David W. Lamb, and Stuart Phinn
- Subjects
unoccupied aerial vehicle ,UAV ,banana plant ,geographic object-based image analysis ,convolutional neural network ,CNN ,Science - Abstract
Unoccupied aerial vehicles (UAVs) have become increasingly commonplace in aiding planning and management decisions in agricultural and horticultural crop production. The ability of UAV-based sensing technologies to provide high spatial (
- Published
- 2021
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22. Measurement of Vegetation Change in Critical Dune Sites along the Eastern Shores of Lake Michigan from 1938 to 2014 with Object-Based Image Analysis.
- Author
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White, Raechel A., Piraino, Kevin, Shortridge, Ashton, and Arbogast, Alan F.
- Subjects
- *
VEGETATION dynamics , *LAND cover , *IMAGE analysis , *SAND dunes , *OPTICALLY stimulated luminescence dating , *LAKES , *REMOTE sensing - Abstract
White, R.A.; Piraino, K.; Shortridge, A., and Arbogast, A.F., 2019. Measurement of vegetation change in critical dune sites along the eastern shores of Lake Michigan from 1938 to 2014 with object-based image analysis. Journal of Coastal Research, 35(4), 842–851. Coconut Creek (Florida), ISSN 0749-0208. Coastal sand dunes are common on coastlines around the world and are often heavily managed to control erosion or to enable their dynamic nature. The largest body of freshwater coastal dunes in the world occurs on the eastern shore of Lake Michigan in North America. This dune system is one of the most heavily utilized landscapes in the Great Lakes region and has tremendous economic and cultural significance. As a result, they are managed in association with Michigan's Sand Dune Protection and Management Act, which seeks, in part, to preserve their diversity, quality, and function. To achieve these goals, it is essential to understand the dunes' geomorphic evolution and behaviors. Prior research has thoroughly investigated their geomorphic development in the past 5000 years; however, this record is based on 14C and optical dates with inherent chronological uncertainty. In contrast, little is known about the patterns or rates of vegetation expansion and contraction in this period. High-resolution remote sensing data may provide new insights into the spatial conditions of the landscape not available through field data collection. Land cover change mapping provides an estimate of the extent of vegetation change in these environments. The use of black and white historical photographs are difficult for these studies because of their lack of spectral information. Geographic object-based image analysis (GEOBIA) incorporates spatial context into the classification process and can improve classification resolution and accuracy from such images. A GEOBIA technique was applied to estimate the extent of vegetation change from 1938 to 2014 in coastal dune systems along much of the eastern coast of Lake Michigan. Results show that 14 of 16 study sites experienced significant vegetation increase; however, classification accuracies depend on the successful co-registration of the images and land cover heterogeneity. These results provide essential baseline information for maintaining the diversity, quality, and function of this dynamic landscape. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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23. SegOptim—A new R package for optimizing object-based image analyses of high-spatial resolution remotely-sensed data.
- Author
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Gonçalves, João, Pôças, Isabel, Marcos, Bruno, Mücher, C.A., and Honrado, João P.
- Subjects
- *
IMAGE analysis , *IMAGE segmentation , *HIGH resolution imaging , *SUPPORT vector machines , *CLASSIFICATION algorithms , *PROCESS optimization - Abstract
Highlights • Inappropriate image segmentation parameters often lead to sub-optimal results. • The new SegOptim R package allows to optimize image segmentation parameters. • SegOptim was tested in very high - high spatial resolution images in six test sites. • Genetic Algorithms optimization improves Geographic Object-based Image Analysis. • Integration between image segmentation and supervised classification is improved. Abstract Geographic Object-based Image Analysis (GEOBIA) is increasingly used to process high-spatial resolution imagery, with applications ranging from single species detection to habitat and land cover mapping. Image segmentation plays a key role in GEOBIA workflows, allowing to partition images into homogenous and mutually exclusive regions. Nonetheless, segmentation techniques require a robust parameterization to achieve the best results. Frequently, inappropriate parameterization leads to sub-optimal results and difficulties in comparing distinct methods. Here, we present an approach based on Genetic Algorithms (GA) to optimize image segmentation parameters by using the performance scores from object-based classification, thus allowing to assess the adequacy of a segmented image in relation to the classification problem. This approach was implemented in a new R package called SegOptim , in which several segmentation algorithms are interfaced, mostly from open-source software (GRASS GIS, Orfeo Toolbox, RSGISLib, SAGA GIS , TerraLib), but also from proprietary software (ESRI ArcGIS). SegOptim also provides access to several machine-learning classification algorithms currently available in R, including Gradient Boosted Modelling, Support Vector Machines, and Random Forest. We tested our approach using very-high to high spatial resolution images collected from an Unmanned Aerial Vehicle (0.03 – 0.10 m), WorldView-2 (2 m), RapidEye (5 m) and Sentinel-2 (10 – 20 m) in six different test sites located in northern Portugal with varying environmental conditions and for different purposes, including invasive species detection and land cover mapping. The results highlight the added value of our novel comparison of image segmentation and classification algorithms. Overall classification performances (assessed through cross-validation with the Kappa index) ranged from 0.85 to 1.00. Pilot-tests show that our GA-based approach is capable of providing sound results for optimizing the parameters of different segmentation algorithms, with benefits for classification accuracy and for comparison across techniques. We also verified that no particular combination of an image segmentation and a classification algorithm is suited for all the tasks/objectives. Consequently, it is crucial to compare and optimize available methods to understand which one is more suited for a certain objective. Our approach allows a closer integration between the segmentation and classification stages, which is of high importance for GEOBIA workflows. The results from our tests confirm that this integration has benefits for comparing and optimizing both processes. We discuss some limitations of the SegOptim approach (and potential solutions) as well as a future roadmap to expand its current functionalities. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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24. Another look on region merging procedure from seed region shift for high-resolution remote sensing image segmentation.
- Author
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Zhang, Xueliang, Xiao, Pengfeng, Feng, Xuezhi, and He, Guangjun
- Subjects
- *
REMOTE-sensing images , *IMAGE segmentation , *IMAGE analysis , *LANDSCAPES , *STATISTICAL matching - Abstract
Abstract Region merging method is widely used for remote sensing image segmentation in Geographic Object-Based Image Analysis (GEOBIA) because of its simplicity and effectiveness. Instead of improving the merging strategy, similarity measure, and stopping rule for region merging method as usual, we aim at exploring the effectiveness of the seed region shift on region merging-based segmentation. Different region merging procedures with different seed region shift frequencies are compared by fixing other conditions, demonstrating that the shift of seed regions serves as one of the key impacts to segmentation accuracy for region merging method. If the seed regions keep fixed during region merging procedure, it will lead to uneven expansion of regions and consequently low segmentation accuracy. However, if the seed regions can be dynamically shifted during region merging procedure, it will lead to even expansion of regions and achieve similar segmentation performance for different region merging strategies. The findings could be beneficial to selecting or further improving image segmentation method for GEOBIA. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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25. Stand age estimation of rubber (Hevea brasiliensis) plantations using an integrated pixel- and object-based tree growth model and annual Landsat time series.
- Author
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Chen, Gang, Thill, Jean-Claude, Anantsuksomsri, Sutee, Tontisirin, Nij, and Tao, Ran
- Subjects
- *
RUBBER factories , *LANDSAT satellites , *TIME series analysis , *TREE growth ,SOUTHEAST Asian politics & government, 1945- ,ECONOMIC conditions in Southeast Asia - Abstract
Abstract Rubber (Hevea brasiliensis) plantations are a rapidly increasing source of land cover change in mainland Southeast Asia. Stand age of rubber plantations obtained at fine scales provides essential baseline data, informing the pace of industrial and smallholder agricultural activities in response to the changing global rubber markets, and local political and socioeconomic dynamics. In this study, we developed an integrated pixel- and object-based tree growth model using Landsat annual time series to estimate the age of rubber plantations in a 21,115 km2 tri-border region along the junction of China, Myanmar and Laos. We produced a rubber stand age map at 30 m resolution, with an accuracy of 87.00% for identifying rubber plantations and an average error of 1.53 years in age estimation. The integration of pixel- and object-based image analysis showed superior performance in building NDVI yearly time series that reduced spectral noises from background soil and vegetation in open-canopy, young rubber stands. The model parameters remained relatively stable during model sensitivity analysis, resulting in accurate age estimation robust to outliers. Compared to the typically weak statistical relationship between single-date spectral signatures and rubber tree age, Landsat image time series analysis coupled with tree growth modeling presents a viable alternative for fine-scale age estimation of rubber plantations. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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26. A Fast and Effective Method for Unsupervised Segmentation Evaluation of Remote Sensing Images
- Author
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Maofan Zhao, Qingyan Meng, Linlin Zhang, Die Hu, Ying Zhang, and Mona Allam
- Subjects
unsupervised evaluation ,image segmentation ,geographic object-based image analysis ,area-weighted variance ,difference to neighbor pixels ,remote sensing ,Science - Abstract
The segmentation of remote sensing images with high spatial resolution is important and fundamental in geographic object-based image analysis (GEOBIA), so evaluating segmentation results without prior knowledge is an essential part in segmentation algorithms comparison, segmentation parameters selection, and optimization. In this study, we proposed a fast and effective unsupervised evaluation (UE) method using the area-weighted variance (WV) as intra-segment homogeneity and the difference to neighbor pixels (DTNP) as inter-segment heterogeneity. Then these two measures were combined into a fast-global score (FGS) to evaluate the segmentation. The effectiveness of DTNP and FGS was demonstrated by visual interpretation as qualitative analysis and supervised evaluation (SE) as quantitative analysis. For this experiment, the ‘‘Multi-resolution Segmentation’’ algorithm in eCognition was adopted in the segmentation and four typical study areas of GF-2 images were used as test data. The effectiveness analysis of DTNP shows that it can keep stability and remain sensitive to both over-segmentation and under-segmentation compared to two existing inter-segment heterogeneity measures. The effectiveness and computational cost analysis of FGS compared with two existing UE methods revealed that FGS can effectively evaluate segmentation results with the lowest computational cost.
- Published
- 2020
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- View/download PDF
27. Geographic Object-Based Image Analysis: A Primer and Future Directions
- Author
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Maja Kucharczyk, Geoffrey J. Hay, Salar Ghaffarian, and Chris H. Hugenholtz
- Subjects
geographic object-based image analysis ,GEOBIA ,object-based image analysis ,OBIA ,machine learning ,deep learning ,Science - Abstract
Geographic object-based image analysis (GEOBIA) is a remote sensing image analysis paradigm that defines and examines image-objects: groups of neighboring pixels that represent real-world geographic objects. Recent reviews have examined methodological considerations and highlighted how GEOBIA improves upon the 30+ year pixel-based approach, particularly for H-resolution imagery. However, the literature also exposes an opportunity to improve guidance on the application of GEOBIA for novice practitioners. In this paper, we describe the theoretical foundations of GEOBIA and provide a comprehensive overview of the methodological workflow, including: (i) software-specific approaches (open-source and commercial); (ii) best practices informed by research; and (iii) the current status of methodological research. Building on this foundation, we then review recent research on the convergence of GEOBIA with deep convolutional neural networks, which we suggest is a new form of GEOBIA. Specifically, we discuss general integrative approaches and offer recommendations for future research. Overall, this paper describes the past, present, and anticipated future of GEOBIA in a novice-accessible format, while providing innovation and depth to experienced practitioners.
- Published
- 2020
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28. Quantifying Intertidal Habitat Relative Coverage in a Florida Estuary Using UAS Imagery and GEOBIA
- Author
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Michael C. Espriella, Vincent Lecours, Peter C. Frederick, Edward V. Camp, and Benjamin Wilkinson
- Subjects
geographic object-based image analysis ,eastern oyster ,unoccupied aircraft system ,uas ,drone ,florida ,coastal habitat ,habitat mapping ,ecognition ,uav ,Science - Abstract
Intertidal habitats like oyster reefs and salt marshes provide vital ecosystem services including shoreline erosion control, habitat provision, and water filtration. However, these systems face significant global change as a result of a combination of anthropogenic stressors like coastal development and environmental stressors such as sea-level rise and disease. Traditional intertidal habitat monitoring techniques are cost and time-intensive, thus limiting how frequently resources are mapped in a way that is often insufficient to make informed management decisions. Unoccupied aircraft systems (UASs) have demonstrated the potential to mitigate these costs as they provide a platform to rapidly, safely, and inexpensively collect data in coastal areas. In this study, a UAS was used to survey intertidal habitats along the Gulf of Mexico coastline in Florida, USA. The structure from motion photogrammetry techniques were used to generate an orthomosaic and a digital surface model from the UAS imagery. These products were used in a geographic object-based image analysis (GEOBIA) workflow to classify mudflat, salt marsh, and oyster reef habitats. GEOBIA allows for a more informed classification than traditional techniques by providing textural and geometric context to habitat covers. We developed a ruleset to allow for a repeatable workflow, further decreasing the temporal cost of monitoring. The classification produced an overall accuracy of 79% in classifying habitats in a coastal environment with little spectral and textural separability, indicating that GEOBIA can differentiate intertidal habitats. This method allows for effective monitoring that can inform management and restoration efforts.
- Published
- 2020
- Full Text
- View/download PDF
29. Optimizing the scale of observation for intertidal habitat classification through multiscale analysis
- Abstract
Monitoring intertidal habitats, such as oyster reefs, salt marshes, and mudflats, is logistically challenging and often cost- and time-intensive. Remote sensing platforms, such as unoccupied aircraft systems (UASs), present an alternative to traditional approaches that can quickly and inexpensively monitor coastal areas. Despite the advantages offered by remote sensing systems, challenges remain concerning the best practices to collect imagery to study these ecosystems. One such challenge is the range of spatial resolutions for imagery that is best suited for intertidal habitat monitoring. Very fine imagery requires more collection and processing times. However, coarser imagery may not capture the fine-scale patterns necessary to understand relevant ecological processes. This study took UAS imagery captured along the Gulf of Mexico coastline in Florida, USA, and resampled the derived orthomosaic and digital surface model to resolutions ranging from 3 to 31 cm, which correspond to the spatial resolutions achievable by other means (e.g., aerial photography and certain commercial satellites). A geographic object-based image analysis (GEOBIA) workflow was then applied to datasets at each resolution to classify mudflats, salt marshes, oyster reefs, and water. The GEOBIA process was conducted within R, making the workflow open-source. Classification accuracies were largely consistent across the resolutions, with overall accuracies ranging from 78% to 82%. The results indicate that for habitat mapping applications, very fine resolutions may not provide information that increases the discriminative power of the classification algorithm. Multiscale classifications were also conducted and produced higher accuracies than single-scale workflows, as well as a measure of uncertainty between classifications.
- Published
- 2022
- Full Text
- View/download PDF
30. Correction: Espriella, M.C.; Lecours, V. Optimizing the scale of observation for intertidal habitat classification through multiscale analysis. Drones 2022, 6, 140
- Abstract
In the original publication [1], there was a mistake in Figure 10 as published. The x-axis is mislabeled. The data and labels are mismatched. The corrected Figure 10 appears below. The authors apologize for any inconvenience caused and state that the scientific conclusions are unaffected. This correction was approved by the Academic Editor. The original publication has also been updated.
- Published
- 2022
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31. On Attribute Thresholding and Data Mapping Functions in a Supervised Connected Component Segmentation Framework
- Author
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Christoff Fourie
- Subjects
geographic object-based image analysis ,segmentation ,mathematical morphology ,sample supervised ,spatial metrics ,metaheuristics ,connected component ,Science - Abstract
Search-centric, sample supervised image segmentation has been demonstrated as a viable general approach applicable within the context of remote sensing image analysis. Such an approach casts the controlling parameters of image processing—generating segments—as a multidimensional search problem resolvable via efficient search methods. In this work, this general approach is analyzed in the context of connected component segmentation. A specific formulation of connected component labeling, based on quasi-flat zones, allows for the addition of arbitrary segment attributes to contribute to the nature of the output. This is in addition to core tunable parameters controlling the basic nature of connected components. Additional tunable constituents may also be introduced into such a framework, allowing flexibility in the definition of connected component connectivity, either directly via defining connectivity differently or via additional processes such as data mapping functions. The relative merits of these two additional constituents, namely the addition of tunable attributes and data mapping functions, are contrasted in a general remote sensing image analysis setting. Interestingly, tunable attributes in such a context, conjectured to be safely useful in general settings, were found detrimental under cross-validated conditions. This is in addition to this constituent’s requiring substantially greater computing time. Casting connectivity definitions as a searchable component, here via the utilization of data mapping functions, proved more beneficial and robust in this context. The results suggest that further investigations into such a general framework could benefit more from focusing on the aspects of data mapping and modifiable connectivity as opposed to the utility of thresholding various geometric and spectral attributes.
- Published
- 2015
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32. A Versatile, Production-Oriented Approach to High-Resolution Tree-Canopy Mapping in Urban and Suburban Landscapes Using GEOBIA and Data Fusion
- Author
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Jarlath O'Neil-Dunne, Sean MacFaden, and Anna Royar
- Subjects
tree canopy ,urban ,urban tree canopy (UTC) assessment ,UTC assessment ,geographic object-based image analysis ,change detection ,eCognition ,LiDAR ,multispectral imagery ,Science - Abstract
The benefits of tree canopy in urban and suburban landscapes are increasingly well known: stormwater runoff control, air-pollution mitigation, temperature regulation, carbon storage, wildlife habitat, neighborhood cohesion, and other social indicators of quality of life. However, many urban areas lack high-resolution tree canopy maps that document baseline conditions or inform tree-planting programs, limiting effective study and management. This paper describes a GEOBIA approach to tree-canopy mapping that relies on existing public investments in LiDAR, multispectral imagery, and thematic GIS layers, thus eliminating or reducing data acquisition costs. This versatile approach accommodates datasets of varying content and quality, first using LiDAR derivatives to identify aboveground features and then a combination of LiDAR and imagery to differentiate trees from buildings and other anthropogenic structures. Initial tree canopy objects are then refined through contextual analysis, morphological smoothing, and small-gap filling. Case studies from locations in the United States and Canada show how a GEOBIA approach incorporating data fusion and enterprise processing can be used for producing high-accuracy, high-resolution maps for large geographic extents. These maps are designed specifically for practical application by planning and regulatory end users who expect not only high accuracy but also high realism and visual coherence.
- Published
- 2014
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- View/download PDF
33. Classifier Directed Data Hybridization for Geographic Sample Supervised Segment Generation
- Author
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Christoff Fourie and Elisabeth Schoepfer
- Subjects
geographic object-based image analysis ,segmentation ,classification ,sample supervised ,spatial metrics ,metaheuristics ,Science - Abstract
Quality segment generation is a well-known challenge and research objective within Geographic Object-based Image Analysis (GEOBIA). Although methodological avenues within GEOBIA are diverse, segmentation commonly plays a central role in most approaches, influencing and being influenced by surrounding processes. A general approach using supervised quality measures, specifically user provided reference segments, suggest casting the parameters of a given segmentation algorithm as a multidimensional search problem. In such a sample supervised segment generation approach, spatial metrics observing the user provided reference segments may drive the search process. The search is commonly performed by metaheuristics. A novel sample supervised segment generation approach is presented in this work, where the spectral content of provided reference segments is queried. A one-class classification process using spectral information from inside the provided reference segments is used to generate a probability image, which in turn is employed to direct a hybridization of the original input imagery. Segmentation is performed on such a hybrid image. These processes are adjustable, interdependent and form a part of the search problem. Results are presented detailing the performances of four method variants compared to the generic sample supervised segment generation approach, under various conditions in terms of resultant segment quality, required computing time and search process characteristics. Multiple metrics, metaheuristics and segmentation algorithms are tested with this approach. Using the spectral data contained within user provided reference segments to tailor the output generally improves the results in the investigated problem contexts, but at the expense of additional required computing time.
- Published
- 2014
- Full Text
- View/download PDF
34. Combining automatic and manual image analysis in a web-mapping application for collaborative conflict damage assessment.
- Author
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Knoth, Christian, Slimani, Sofian, Appel, Marius, and Pebesma, Edzer
- Subjects
- *
REMOTE sensing , *IMAGE analysis , *AERIAL surveys , *WEB-based user interfaces , *DESTRUCTION of cultural property , *PILLAGE , *VIOLENCE , *AUTOMATIC detection in radar - Abstract
Remote sensing is increasingly being used by non-profit organizations and international initiatives to localize and document combat impacts such as conflict damage. Most of the practical applications rely on labor-intensive and time-consuming manual image analysis. Even when using crowdsourcing or volunteer networks, the workload can quickly become challenging when larger areas have to be monitored over longer time periods. In this paper, we propose an approach that combines automatic change detection methods with collaborative mapping in a web application for conflict damage assessment in Darfur, Sudan. Settlement areas are automatically detected and searched for destructed dwelling structures by geographic object-based image analysis (GEOBIA). The web application prioritizes these areas based on the detected degree of destruction to guide human analysts to the most important locations. In a user experiment with 30 participants we evaluated the performance of volunteers with and without the automatic prioritization and investigated their mapping sequences. Participants who were guided by the prioritization detected 70.7% more target objects than participants mapping without guidance, who invested parts of their mapping time in examining locations that show little to no destruction. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
35. Mapping of Cold-Water Coral Carbonate Mounds Based on Geomorphometric Features: An Object-Based Approach.
- Author
-
Diesing, Markus and Thorsnes, Terje
- Subjects
CORAL reefs & islands ,ECOSYSTEMS - Abstract
Cold-water coral reefs are rich, yet fragile ecosystems found in colder oceanic waters. Knowledge of their spatial distribution on continental shelves, slopes, seamounts and ridge systems is vital for marine spatial planning and conservation. Cold-water corals frequently form conspicuous carbonate mounds of varying sizes, which are identifiable from multibeam echosounder bathymetry and derived geomorphometric attributes. However, the often-large number of mounds makes manual interpretation and mapping a tedious process. We present a methodology that combines image segmentation and random forest spatial prediction with the aim to derive maps of carbonate mounds and an associated measure of confidence. We demonstrate our method based on multibeam echosounder data from Iverryggen on the mid-Norwegian shelf. We identified the image-object mean planar curvature as the most important predictor. The presence and absence of carbonate mounds is mapped with high accuracy. Spatially-explicit confidence in the predictions is derived from the predicted probability and whether the predictions are within or outside the modelled range of values and is generally high. We plan to apply the showcased method to other areas of the Norwegian continental shelf and slope where multibeam echosounder data have been collected with the aim to provide crucial information for marine spatial planning. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
36. 地理本体驱动的遥感影像面向对象分析方法.
- Author
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顾海燕, 李海涛, 闫利, 韩颜顺, 余凡, 杨懿, and 刘正军
- Abstract
One of the unsolved problems of Geographic Object-Based Image Analysis (GEOBIA) is "the classification results may be inconsistent by different expert in the process of image analysis". Based on geo-ontology theory, this paper presents a novel framework "geo-graphical entity description-model building-object classification" to improve the interpretation of GEOBIA results. A geographical entity is expressed formally from the perspective of geo-ontology based on the characteristics of remote sensing image and expert knowledge. The semantic network model is built by using knowledge engineering methods and computer-actionable formal ontology languages. The image objects are classified based on semantic network model and expert rule. In the case of Land-cover classification, results show that, this method can not only obtain the classification results which reflect the geographical objects, but also grasp the semantic information of the geographical entities, and realize the sharing of land-cover classification knowledge and the reusing of the semantic network model. This new approach provides a holistic framework and method for GEOBIA. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
37. Assessing agricultural damage by wild boar using drones.
- Author
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Rutten, Anneleen, Casaer, Jim, Vogels, Marjolein F. A., Addink, Elisabeth A., Vanden Borre, Jeroen, and Leirs, Herwig
- Subjects
- *
WILD boar , *DRONE aircraft , *AGRICULTURE , *CROPS , *RANDOM forest algorithms - Abstract
In Flanders (northern Belgium), wild boar (Sus scrofa) returned in 2006 after 50 years of absence and the population is increasing, both in abundance and geographic extent. In the absence of wild boar, Flanders' landscape structure changed into a dense, mosaic‐like pattern of agricultural, natural, and urban areas. The return of the wild boar increasingly leads to human–wildlife conflicts, mainly linked to damage in agriculture. Hence, there is a growing need for a time‐efficient, standardized, and accurate method to assess crop damage. We present an Unmanned Aerial Vehicle‐based method, using Geographic Object‐Based Image Analysis and Random Forests to estimate the damaged area and associated yield losses, between 2015 and 2017, due to wild boar in individual fields in Flanders. Our approach resulted in an 84.50% overall accuracy in calculating damaged area for maize fields and 94.40% for grasslands. Damage levels ranged between 14.3% and 20.2% in maize fields and 16.5% to 25.4% in grasslands. Our method can provide objective base data for compensation schemes and guide management strategies based on damage assessments. © 2018 The Wildlife Society. We used drones, Geographic Object‐Based Image Analysis and Random Forest models to assess crop damage by wild boar. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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38. An Object-Based Approach for Fire History Reconstruction by Using Three Generations of Landsat Sensors
- Author
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Thomas Katagis, Ioannis Z. Gitas, and George H. Mitri
- Subjects
fire history reconstruction ,forest fires ,burned area mapping ,Landsat ,geographic object-based image analysis ,Science - Abstract
In this study, the capability of geographic object-based image analysis (GEOBIA) in the reconstruction of the recent fire history of a typical Mediterranean area was investigated. More specifically, a semi-automated GEOBIA procedure was developed and tested on archived and newly acquired Landsat Multispectral Scanner (MSS), Thematic Mapper (TM), and Operational Land Imager (OLI) images in order to accurately map burned areas in the Mediterranean island of Thasos. The developed GEOBIA ruleset was built with the use of the TM image and then applied to the other two images. This process of transferring the ruleset did not require substantial adjustments or any replacement of the initially selected features used for the classification, thus, displaying reduced complexity in processing the images. As a result, burned area maps of very high accuracy (over 94% overall) were produced. In addition to the standard error matrix, the employment of additional measures of agreement between the produced maps and the reference data revealed that “spatial misplacement” was the main source of classification error. It can be concluded that the proposed approach can be potentially used for reconstructing the recent (40-year) fire history in the Mediterranean, based on extended time series of Landsat or similar data.
- Published
- 2014
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39. Data Transformation Functions for Expanded Search Spaces in Geographic Sample Supervised Segment Generation
- Author
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Christoff Fourie and Elisabeth Schoepfer
- Subjects
geographic object-based image analysis ,segmentation ,data transformations ,sample supervised ,spatial metrics ,metaheuristics ,Science - Abstract
Sample supervised image analysis, in particular sample supervised segment generation, shows promise as a methodological avenue applicable within Geographic Object-Based Image Analysis (GEOBIA). Segmentation is acknowledged as a constituent component within typically expansive image analysis processes. A general extension to the basic formulation of an empirical discrepancy measure directed segmentation algorithm parameter tuning approach is proposed. An expanded search landscape is defined, consisting not only of the segmentation algorithm parameters, but also of low-level, parameterized image processing functions. Such higher dimensional search landscapes potentially allow for achieving better segmentation accuracies. The proposed method is tested with a range of low-level image transformation functions and two segmentation algorithms. The general effectiveness of such an approach is demonstrated compared to a variant only optimising segmentation algorithm parameters. Further, it is shown that the resultant search landscapes obtained from combining mid- and low-level image processing parameter domains, in our problem contexts, are sufficiently complex to warrant the use of population based stochastic search methods. Interdependencies of these two parameter domains are also demonstrated, necessitating simultaneous optimization.
- Published
- 2014
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40. Predicting catchment-scale methane fluxes with multi-source remote sensing
- Author
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Terhikki Manninen, Aleksi Räsänen, Tarmo Virtanen, Annalea Lohila, Mika Korkiakoski, Helsinki Institute of Sustainability Science (HELSUS), Urban Environmental Policy, Ecosystems and Environment Research Programme, Institute for Atmospheric and Earth System Research (INAR), Tarmo Virtanen / Principal Investigator, and Environmental Change Research Unit (ECRU)
- Subjects
1171 Geosciences ,Topographic Wetness Index ,010504 meteorology & atmospheric sciences ,Geography, Planning and Development ,Synthetic aperture radar ,Land cover ,01 natural sciences ,Methane flux measurements ,Geographic object-based image analysis ,Satellite imagery ,Digital elevation model ,1172 Environmental sciences ,0105 earth and related environmental sciences ,Nature and Landscape Conservation ,Remote sensing ,Vegetation mapping ,Lidar ,Ecology ,04 agricultural and veterinary sciences ,Vegetation ,15. Life on land ,Remote sensing (archaeology) ,040103 agronomy & agriculture ,Spatial ecology ,0401 agriculture, forestry, and fisheries ,Environmental science ,Landscape ecology - Abstract
Context Spatial patterns of CH4 fluxes can be modeled with remotely sensed data representing land cover, soil moisture and topography. Spatially extensive CH4 flux measurements conducted with portable analyzers have not been previously upscaled with remote sensing. Objectives How well can the CH4 fluxes be predicted with plot-based vegetation measures and remote sensing? How does the predictive skill of the model change when using different combinations of predictor variables? Methods We measured CH4 fluxes in 279 plots in a 12.4 km2 peatland-forest-mosaic landscape in Pallas area, northern Finland in July 2019. We compared 20 different CH4 flux maps produced with vegetation field data and remote sensing data including Sentinel-1, Sentinel-2 and digital terrain model (DTM). Results The landscape acted as a net source of CH4 (253–502 µg m−2 h−1) and the proportion of source areas varied considerably between maps (12–50%). The amount of explained variance was high in CH4 regressions (59–76%, nRMSE 8–10%). Regressions including remote sensing predictors had better performance than regressions with plot-based vegetation predictors. The most important remote sensing predictors included VH-polarized Sentinel-1 features together with topographic wetness index and other DTM features. Spatial patterns were most accurately predicted when the landscape was divided into sinks and sources with remote sensing-based classifications, and the fluxes were modeled for sinks and sources separately. Conclusions CH4 fluxes can be predicted accurately with multi-source remote sensing in northern boreal peatland landscapes. High spatial resolution remote sensing-based maps constrain uncertainties related to CH4 fluxes and their spatial patterns.
- Published
- 2021
41. Detection of Shelterbelt Density Change Using Historic APFO and NAIP Aerial Imagery
- Author
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Morgen W.V. Burke, Bradley C. Rundquist, and Haochi Zheng
- Subjects
geographic object-based image analysis ,shelterbelts ,Conservation Reserve Program ,Science - Abstract
Grand Forks County, North Dakota, boasts the highest concentration of shelterbelts in the World. As trees age and reach their lifespan limits, renovations should have taken place with new trees being planted. However, in recent years, the rate of tree removal is thought to exceed the rate of replanting, which can result in a net loss of shelterbelts. Through manual digitization and geographic object-based image analysis (GEOBIA), we mapped shelterbelt densities in the Grand Forks County using historical and contemporary aerial photography, and estimated actual changes in density over 54 years. Our results showed a doubling in shelterbelt densities from 1962 to 2014, with an increase of 6402 m2/km2 over the 52 years (or 123 m2/km2/year). From 2014 to 2016, we measured 1,040,178 m2 of shelterbelt areas removed from the county, creating a density loss of −157 m2/km2/year. The total change over two years was relatively small compared with that seen over the previous 52 years. However, the fact that the rate of shelterbelt planting has slowed, and more removal is occurring, should be of concern for an increased risk of wind erosion, similar to that experienced in Midwestern U.S. during the 1930s. The reduction of shelterbelt density is likely related to changes in farming practices and a decline in the Conservation Reserve Program, resulting from the increased returns of growing other row crops. To encourage shelterbelt planting as a conservation practice, additional guidelines and financial support should be considered to balance the tradeoff between soil erosion and agricultural intensification.
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- 2019
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42. Toward combining thematic information with hierarchical multiscale segmentations using tree Markov random field model.
- Author
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Zhang, Xueliang, Xiao, Pengfeng, and Feng, Xuezhi
- Subjects
- *
HIGH resolution imaging , *REMOTE sensing , *IMAGE segmentation , *MARKOV random fields , *MULTISCALE modeling - Abstract
It has been a common idea to produce multiscale segmentations to represent the various geographic objects in high-spatial resolution remote sensing (HR) images. However, it remains a great challenge to automatically select the proper segmentation scale(s) just according to the image information. In this study, we propose a novel way of information fusion at object level by combining hierarchical multiscale segmentations with existed thematic information produced by classification or recognition. The tree Markov random field (T-MRF) model is designed for the multiscale combination framework, through which the object type is determined as close as the existed thematic information. At the same time, the object boundary is jointly determined by the thematic labels and the multiscale segments through the minimization of the energy function. The benefits of the proposed T-MRF combination model include: (1) reducing the dependence of segmentation scale selection when utilizing multiscale segmentations; (2) exploring the hierarchical context naturally imbedded in the multiscale segmentations. The HR images in both urban and rural areas are used in the experiments to show the effectiveness of the proposed combination framework on these two aspects. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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43. An Object-Based Semantic Classification Method for High Resolution Remote Sensing Imagery Using Ontology.
- Author
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Haiyan Gu, Haitao Li, Li Yan, Zhengjun Liu, Blaschke, Thomas, and Soergel, Uwe
- Subjects
- *
SEMANTIC networks (Information theory) , *IMAGE analysis , *REMOTE-sensing images , *SEMANTIC Web , *ONTOLOGY - Abstract
Geographic Object-Based Image Analysis (GEOBIA) techniques have become increasingly popular in remote sensing. GEOBIA has been claimed to represent a paradigm shift in remote sensing interpretation. Still, GEOBIA--similar to other emerging paradigms--lacks formal expressions and objective modelling structures and in particular semantic classification methods using ontologies. This study has put forward an object-based semantic classification method for high resolution satellite imagery using an ontology that aims to fully exploit the advantages of ontology to GEOBIA. A three-step workflow has been introduced: ontology modelling, initial classification based on a data-driven machine learning method, and semantic classification based on knowledge-driven semantic rules. The classification part is based on data-driven machine learning, segmentation, feature selection, sample collection and an initial classification. Then, image objects are re-classified based on the ontological model whereby the semantic relations are expressed in the formal languages OWL and SWRL. The results show that the method with ontology--as compared to the decision tree classification without using the ontology--yielded minor statistical improvements in terms of accuracy for this particular image. However, this framework enhances existing GEOBIA methodologies: ontologies express and organize the whole structure of GEOBIA and allow establishing relations, particularly spatially explicit relations between objects as well as multi-scale/hierarchical relations. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
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44. Unsupervised Segmentation Evaluation Using Area-Weighted Variance and Jeffries-Matusita Distance for Remote Sensing Images
- Author
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Yongji Wang, Qingwen Qi, and Ying Liu
- Subjects
image segmentation ,unsupervised evaluation ,remote sensing ,area-weighted variance ,Jeffries-Matusita distance ,geographic object-based image analysis ,Science - Abstract
Image segmentation is an important process and a prerequisite for object-based image analysis. Thus, evaluating the performance of segmentation algorithms is essential to identify effective segmentation methods and to optimize the scale. In this paper, we propose an unsupervised evaluation (UE) method using the area-weighted variance (WV) and Jeffries-Matusita (JM) distance to compare two image partitions to evaluate segmentation quality. The two measures were calculated based on the local measure criteria, and the JM distance was improved by considering the contribution of the common border between adjacent segments and the area of each segment in the JM distance formula, which makes the heterogeneity measure more effective and objective. Then the two measures were presented as a curve when changing the scale from 8 to 20, which can reflect the segmentation quality in both over- and under-segmentation. Furthermore, the WV and JM distance measures were combined by using three different strategies. The effectiveness of the combined indicators was illustrated through supervised evaluation (SE) methods to clearly reveal the segmentation quality and capture the trade-off between the two measures. In these experiments, the multiresolution segmentation (MRS) method was adopted for evaluation. The proposed UE method was compared with two existing UE methods to further confirm their capabilities. The visual and quantitative SE results demonstrated that the proposed UE method can improve the segmentation quality.
- Published
- 2018
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45. Spatial Characterization and Mapping of Gated Communities
- Author
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Agnes Silva de Araujo and Alfredo Pereira de Queiroz
- Subjects
gated communities ,quality of life index ,land coverage ,geographic object-based image analysis ,Geography (General) ,G1-922 - Abstract
The increase in gated communities is the most important recent urban phenomenon in Latin America. This article proposes a methodology to identify the morphological features and spatial characteristics of gated communities to map them based on the land cover map and the quality of life index. The importance of this proposal is related to the fact that there are no official statistics on gated communities in most Latin American countries. The proposal was tested in Marília, a medium-sized city in southeastern Brazil. Geographic object-based image analysis with high-resolution satellite images and 2010 demographic census variables were used to support the research procedures. The accuracy of the output was 83.3%. It was found that there is a positive correlation between the quality of life index and the occurrence of high-standard gated communities (golden ghettos). They were mainly identified by the following land cover classes: white painted concrete slabs/light-colored roof tiles, and the existence of pavement, pools, and herbaceous vegetation. In addition to mapping the gated communities, it was possible to classify them according to the categories proposed in the literature (golden ghettos and lifestyle gated communities).
- Published
- 2018
- Full Text
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46. An Efficient Parallel Multi-Scale Segmentation Method for Remote Sensing Imagery
- Author
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Haiyan Gu, Yanshun Han, Yi Yang, Haitao Li, Zhengjun Liu, Uwe Soergel, Thomas Blaschke, and Shiyong Cui
- Subjects
remote sensing image segmentation ,geographic object-based image analysis ,graph theory ,fractal net evolution approach ,minimum spanning tree ,minimum heterogeneity rule ,message passing interface ,Science - Abstract
Remote sensing (RS) image segmentation is an essential step in geographic object-based image analysis (GEOBIA) to ultimately derive “meaningful objects”. While many segmentation methods exist, most of them are not efficient for large data sets. Thus, the goal of this research is to develop an efficient parallel multi-scale segmentation method for RS imagery by combining graph theory and the fractal net evolution approach (FNEA). Specifically, a minimum spanning tree (MST) algorithm in graph theory is proposed to be combined with a minimum heterogeneity rule (MHR) algorithm that is used in FNEA. The MST algorithm is used for the initial segmentation while the MHR algorithm is used for object merging. An efficient implementation of the segmentation strategy is presented using data partition and the “reverse searching-forward processing” chain based on message passing interface (MPI) parallel technology. Segmentation results of the proposed method using images from multiple sensors (airborne, SPECIM AISA EAGLE II, WorldView-2, RADARSAT-2) and different selected landscapes (residential/industrial, residential/agriculture) covering four test sites indicated its efficiency in accuracy and speed. We conclude that the proposed method is applicable and efficient for the segmentation of a variety of RS imagery (airborne optical, satellite optical, SAR, high-spectral), while the accuracy is comparable with that of the FNEA method.
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- 2018
- Full Text
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47. Mapping of Cold-Water Coral Carbonate Mounds Based on Geomorphometric Features: An Object-Based Approach
- Author
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Markus Diesing and Terje Thorsnes
- Subjects
cold-water coral ,carbonate mound ,habitat mapping ,spatial prediction ,image segmentation ,geographic object-based image analysis ,random forest ,accuracy ,confidence ,Geology ,QE1-996.5 - Abstract
Cold-water coral reefs are rich, yet fragile ecosystems found in colder oceanic waters. Knowledge of their spatial distribution on continental shelves, slopes, seamounts and ridge systems is vital for marine spatial planning and conservation. Cold-water corals frequently form conspicuous carbonate mounds of varying sizes, which are identifiable from multibeam echosounder bathymetry and derived geomorphometric attributes. However, the often-large number of mounds makes manual interpretation and mapping a tedious process. We present a methodology that combines image segmentation and random forest spatial prediction with the aim to derive maps of carbonate mounds and an associated measure of confidence. We demonstrate our method based on multibeam echosounder data from Iverryggen on the mid-Norwegian shelf. We identified the image-object mean planar curvature as the most important predictor. The presence and absence of carbonate mounds is mapped with high accuracy. Spatially-explicit confidence in the predictions is derived from the predicted probability and whether the predictions are within or outside the modelled range of values and is generally high. We plan to apply the showcased method to other areas of the Norwegian continental shelf and slope where multibeam echosounder data have been collected with the aim to provide crucial information for marine spatial planning.
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- 2018
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48. Landscape Changes in the Southern Coalfields of West Virginia: Multi-Level Intensity Analysis and Surface Mining Transitions in the Headwaters of the Coal River from 1976 to 2016
- Author
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Michael P. Strager, Charles Yuill, Vincenzo Cribari, and Aaron E. Maxwell
- Subjects
010504 meteorology & atmospheric sciences ,Distribution (economics) ,Land cover ,010501 environmental sciences ,01 natural sciences ,Novel ecosystem ,surface mining reclamation act ,Land reclamation ,Surface mining ,Geographic Object-Based Image Analysis ,high resolution images ,0105 earth and related environmental sciences ,Nature and Landscape Conservation ,Global and Planetary Change ,land cover change ,Ecology ,Land use ,business.industry ,Agriculture ,Vegetation ,orthomosaic ,Ancillary data ,mountain top removal ,machine learning ,Environmental science ,ancillary data ,Physical geography ,historic images ,business ,Landsat - Abstract
This study analyzes land-cover transitions in the headwaters of the Big Coal River in the Central Appalachian Region of the US, from 1976 to 2016, where surface mining was found as the major driver of landscape change. The land-change analysis combined Multi-Level Intensity Analysis for two-time intervals (1976–1996, 1996–2016) with Difference Components, to differentiate suspected misclassification errors from actual changes. Two land cover classifications were obtained with segmentation analysis and machine learning algorithms from historical high-resolution aerial images and ancillary data. Intensity Analysis allowed for the inspection of transitions across five land cover (LC) classes and measure the degree of non-stationarity of land change patterns. Results found surface mining-related classes and their transitions, including the effects of reclamation processes on areas mined before the enactment of the Surface Mining Control and Reclamation Act (SMCRA, 1977). Results included changes in settlement distribution, low vegetation, water bodies, and forest class transitions. The findings can be applied to infer similar land-change processes in the more extensive Appalachian region where Mountain Top Removal (MTR) operations are widespread. The overall method can be used to address similar problems and inform landscape managers with detailed data to support land use alternatives and conservation in regions that experienced intense changes and are characterized by anthropogenic disturbances and novel ecosystems.
- Published
- 2021
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49. A FRAMEWORK FOR GEOGRAPHIC OBJECT-BASED IMAGE ANALYSIS (GEOBIA) BASED ON GEOGRAPHIC ONTOLOGY.
- Author
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Gu, H. Y., Li, H. T., Yan, L., and Lu, X. J.
- Subjects
IMAGE analysis ,ONTOLOGY ,GEOGRAPHY ,SEMANTIC networks (Information theory) ,SEMANTIC Web - Abstract
GEOBIA (Geographic Object-Based Image Analysis) is not only a hot topic of current remote sensing and geographical research. It is believed to be a paradigm in remote sensing and GIScience. The lack of a systematic approach designed to conceptualize and formalize the class definitions makes GEOBIA a highly subjective and difficult method to reproduce. This paper aims to put forward a framework for GEOBIA based on geographic ontology theory, which could implement "Geographic entities - Image objects -Geographic objects" true reappearance. It consists of three steps, first, geographical entities are described by geographic ontology, second, semantic network model is built based on OWL(ontology web language), at last, geographical objects are classified with decision rule or other classifiers. A case study of farmland ontology was conducted for describing the framework. The strength of this framework is that it provides interpretation strategies and global framework for GEOBIA with the property of objective, overall, universal, universality, etc., which avoids inconsistencies caused by different experts' experience and provides an objective model for mage analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
50. On Attribute Thresholding and Data Mapping Functions in a Supervised Connected Component Segmentation Framework.
- Author
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Fourie, Christoff
- Subjects
- *
DATA mapping , *IMAGE segmentation , *DATA transmission systems , *IMAGE analysis , *REMOTE sensing - Abstract
Search-centric, sample supervised image segmentation has been demonstrated as a viable general approach applicable within the context of remote sensing image analysis. Such an approach casts the controlling parameters of image processing—generating segments-as a multidimensional search problem resolvable via efficient search methods. In this work, this general approach is analyzed in the context of connected component segmentation. A specific formulation of connected component labeling, based on quasi-flat zones, allows for the addition of arbitrary segment attributes to contribute to the nature of the output. This is in addition to core tunable parameters controlling the basic nature of connected components. Additional tunable constituents may also be introduced into such a framework, allowing flexibility in the definition of connected component connectivity, either directly via defining connectivity differently or via additional processes such as data mapping functions. The relative merits of these two additional constituents, namely the addition of tunable attributes and data mapping functions, are contrasted in a general remote sensing image analysis setting. Interestingly, tunable attributes in such a context, conjectured to be safely useful in general settings, were found detrimental under cross-validated conditions. This is in addition to this constituent's requiring substantially greater computing time. Casting connectivity definitions as a searchable component, here via the utilization of data mapping functions, proved more beneficial and robust in this context. The results suggest that further investigations into such a general framework could benefit more from focusing on the aspects of data mapping and modifiable connectivity as opposed to the utility of thresholding various geometric and spectral attributes. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
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