199 results on '"mixed pixel"'
Search Results
2. Assessment of FSDAF Accuracy on Cotton Yield Estimation Using Different MODIS Products and Landsat Based on the Mixed Degree Index with Different Surroundings.
- Author
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Meng, Linghua, Liu, Huanjun, Ustin, Susan L, and Zhang, Xinle
- Subjects
Gossypium ,Crops ,Agricultural ,Seasons ,Satellite Imagery ,FSDAF ,MDI ,cotton growth ,field scale ,mixed pixel ,Environmental Science and Management ,Ecology ,Analytical Chemistry ,Distributed Computing ,Electrical and Electronic Engineering - Abstract
Research on fusion modeling of high spatial and temporal resolution images typically uses MODIS products at 500 m and 250 m resolution with Landsat images at 30 m, but the effect on results of the date of reference images and the 'mixed pixels' nature of moderate-resolution imaging spectroradiometer (MODIS) images are not often considered. In this study, we evaluated those effects using the flexible spatiotemporal data fusion model (FSDAF) to generate fusion images with both high spatial resolution and frequent coverage over three cotton field plots in the San Joaquin Valley of California, USA. Landsat images of different dates (day-of-year (DOY) 174, 206, and 254, representing early, middle, and end stages of the growing season, respectively) were used as reference images in fusion with two MODIS products (MOD09GA and MOD13Q1) to produce new time-series fusion images with improved temporal sampling over that provided by Landsat alone. The impact on the accuracy of yield estimation of the different Landsat reference dates, as well as the degree of mixing of the two MODIS products, were evaluated. A mixed degree index (MDI) was constructed to evaluate the accuracy and time-series fusion results of the different cotton plots, after which the different yield estimation models were compared. The results show the following: (1) there is a strong correlation (above 0.6) between cotton yield and both the Normalized Difference Vegetation Index (NDVI) from Landsat (NDVIL30) and NDVI from the fusion of Landsat with MOD13Q1 (NDVIF250). (2) Use of a mid-season Landsat image as reference for the fusion of MODIS imagery provides a better yield estimation, 14.73% and 17.26% higher than reference images from early or late in the season, respectively. (3) The accuracy of the yield estimation model of the three plots is different and relates to the MDI of the plots and the types of surrounding crops. These results can be used as a reference for data fusion for vegetation monitoring using remote sensing at the field scale.
- Published
- 2021
3. Optimization of desert lake information extraction from remote sensing images using cellular automata
- Author
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Qiuji Chen and Yanan Cao
- Subjects
Blown-sand mining area ,Desert lake ,Remote sensing ,Mixed pixel ,Cellular automata ,Mining engineering. Metallurgy ,TN1-997 - Abstract
Abstract Desert lakes are important wetland resources in the blown-sand area of western China and play a significant role in maintaining the regional ecological environment. However, large-scale coal mining in recent years has considerably impacted the deposition condition of several lakes. Rapid and accurate extraction of lake information based on satellite images is crucial for developing protective measures against desertification. However, the spatial resolution of these images often leads to mixed pixels near water boundaries, affecting extraction precision. Traditional pixel unmixing methods mainly obtain water coverage information in a mixed pixel, making it difficult to accurately describe the spatial distribution. In this paper, the cellular automata (CA) model was adopted in order to realize lake information extraction at a sub-pixel level. A mining area in Shenmu City, Shaanxi Province, China is selected as the research region, using the image of Sentinel-2 as the data source and the high spatial resolution UAV image as the reference. First, water coverage of mixed pixels in the Sentinel-2 image was calculated with the dimidiate pixel model and the fully constrained least squares (FCLS) method. Second, the mixed pixels were subdivided to form the cellular space at a sub-pixel level and the transition rules are constructed based on the water coverage information and spatial correlation. Lastly, the process was implemented using Python and IDL, with the ArcGIS and ENVI software being used for validation. The experiments show that the CA model can improve the sub-pixel positioning accuracy for lake bodies in mixed pixel image and improve classification accuracy. The FCLS-CA model has a higher accuracy and is able to identify most water bodies in the study area, and is therefore suitable for desert lake monitoring in mining areas.
- Published
- 2023
- Full Text
- View/download PDF
4. 基于多端元解混模型的博斯腾湖区域植被和水域 时空变化特征及趋势分析
- Author
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艾斯克尔, 亚夏尔 and 如素力, 玉素甫江
- Subjects
WETLANDS ,PIXELS ,LAKES - Abstract
Copyright of Arid Land Geography is the property of Chinese Academy of Sciences, Xinjiang Institute of Ecology & Geography and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2023
- Full Text
- View/download PDF
5. Optimization of desert lake information extraction from remote sensing images using cellular automata.
- Author
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Chen, Qiuji and Cao, Yanan
- Subjects
DATA mining ,CELLULAR automata ,DESERTIFICATION ,CELL imaging ,IMAGE recognition (Computer vision) ,TERRITORIAL waters ,REMOTE sensing - Abstract
Desert lakes are important wetland resources in the blown-sand area of western China and play a significant role in maintaining the regional ecological environment. However, large-scale coal mining in recent years has considerably impacted the deposition condition of several lakes. Rapid and accurate extraction of lake information based on satellite images is crucial for developing protective measures against desertification. However, the spatial resolution of these images often leads to mixed pixels near water boundaries, affecting extraction precision. Traditional pixel unmixing methods mainly obtain water coverage information in a mixed pixel, making it difficult to accurately describe the spatial distribution. In this paper, the cellular automata (CA) model was adopted in order to realize lake information extraction at a sub-pixel level. A mining area in Shenmu City, Shaanxi Province, China is selected as the research region, using the image of Sentinel-2 as the data source and the high spatial resolution UAV image as the reference. First, water coverage of mixed pixels in the Sentinel-2 image was calculated with the dimidiate pixel model and the fully constrained least squares (FCLS) method. Second, the mixed pixels were subdivided to form the cellular space at a sub-pixel level and the transition rules are constructed based on the water coverage information and spatial correlation. Lastly, the process was implemented using Python and IDL, with the ArcGIS and ENVI software being used for validation. The experiments show that the CA model can improve the sub-pixel positioning accuracy for lake bodies in mixed pixel image and improve classification accuracy. The FCLS-CA model has a higher accuracy and is able to identify most water bodies in the study area, and is therefore suitable for desert lake monitoring in mining areas. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
6. Phase ambiguity resolution and mixed pixel detection in EDM with multiple modulation wavelengths.
- Author
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Butt, Jemil Avers, Salido-Monzú, David, and Wieser, Andreas
- Subjects
- *
AMBIGUITY , *MIXED integer linear programming , *PIXELS , *WAVELENGTHS - Abstract
Distance measurement based on the accumulated phase of intensity-modulated continuous-wave lasers is an established approach for pointwise geometry acquisition in uncontrolled conditions, enabling some of the most accurate Lidar/laser-scanning solutions. Inherently affected by cycle ambiguities due to the modulo 2 π phase observations, several modulation wavelengths are typically used in practical implementations to extend the measurement range. One of the main limitations of these systems arises from their inability to decouple mixed signals affected by different delays. This is especially relevant when the laser beam illuminates simultaneously two or more surfaces at significantly different distances, producing mixed-pixel measurements in which the estimated distance does not reliably correspond to any of the involved scatterers. Algorithms for detection and filtering of mixed pixels within point-cloud data have been proposed based on analyzing consistency across local neighborhoods. The resolution of multiple scatterers on individual measurements, however, has not been yet reported nor is provided by undisclosed commercial implementations. In this work, we analyze the problem of signal mixing in multi-wavelength phase-based distance estimation, and propose an algorithm for joint phase ambiguity resolution and mixed pixel detection based on mixed integer linear programming. We first analyze theoretically the performance limits of the proposed solution, demonstrating unbiasedness in the presence of noise and robustness in the presence of multiple scatterers. In addition, we investigate empirically the impact of noise, mixed measurements and choice of modulation wavelengths on the performance of the proposed algorithm. The results demonstrate the capacity of the presented approach, given an adequate wavelength selection, to provide unambiguous distance estimates under realistic noise conditions and to identify measurements affected by mixed pixels while approximating the position of the dominant scatterer. Aside from contributing to improving the reliability and resolution capability of Lidar and laser-scanning data, the proposed solution sets a promising step towards fully resolved multi-target distance measurement. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
7. Global Comparison of Leaf Area Index Products over Water-Vegetation Mixed Heterogeneous Surface Network (HESNet-WV).
- Author
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Liu, Chang, Li, Jing, Liu, Qinhuo, Xu, Baodong, Dong, Yadong, Zhao, Jing, Mumtaz, Faisal, Gu, Chenpeng, and Zhang, Hu
- Subjects
- *
LEAF area index , *GLASS products , *BROADLEAF forests - Abstract
Spatial land surface heterogeneities are widespread at various scales and represent a great challenge to leaf area index (LAI) retrievals and product validations. In this paper, considering the mixed water and vegetation pixels prevalent at moderate and low resolutions, we propose a methodological framework for conducting global comparisons of heterogeneous land surfaces based on criterion setting and a global search of high-resolution data. We construct a global network, Heterogeneous Surface Network aiming Water and Vegetation Mixture (HESNet-WV), comprised of three vegetation types: grassland, evergreen broadleaf forests (EBFs), and evergreen needle forests (ENFs). Validation is performed using the MCD15A3H Global 500-m/4-day and GLASS 500-m/8-day LAI products. As the water area fraction (WAF), LAI values and LAI inversion errors increase in the MODIS and GLASS products, the GLASS product errors (relative LAI error (RELAI): 94.43%, bias: 0.858) are lower than the MODIS product errors (RELAI: 124.05%, bias: 1.209). The result indicates that the proposed framework can be applied to evaluate the accuracy of LAI values in mixed water-vegetation pixels in different global LAI products. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
8. Separating snow and forest temperatures with thermal infrared remote sensing
- Author
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Lundquist, Jessica D, Chickadel, Chris, Cristea, Nicoleta, Currier, William Ryan, Henn, Brian, Keenan, Eric, and Dozier, Jeff
- Subjects
Earth Sciences ,Thermal infrared ,MODIS ,Land surface temperature ,Fractional snow covered area ,Mixed pixel ,Forest temperature ,Snow surface temperature ,Physical Geography and Environmental Geoscience ,Geomatic Engineering ,Geological & Geomatics Engineering ,Earth sciences - Abstract
Thermal infrared sensing from space is a well-developed field, but mixed pixels pose a problem for many applications. We present a field study in Dana Meadows, Yosemite National Park, California to scale from point (~2-m resolution) to aerial (~5-m resolution gridded, 1 km × 6 km extent) to satellite (MODIS, ~1000-m resolution, global extent) observations. We demonstrate how multiple thermal bands on MODIS can be used to separate snow and forest temperatures and determine the fractional snow-covered area (fSCA) over a 3 km × 3 km array of 9 MODIS grid cells. During the day, visible, near-infrared, and shortwave-infrared bands provide a first guess of fSCA and help to constrain the solution. This technique, which has estimated errors
- Published
- 2018
9. 基于无人机图像混合像元分解模型提高小麦基本苗数的反演精度.
- Author
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杜蒙蒙, 李民赞, 姬江涛, and Ali Roshanianfard
- Subjects
- *
AGRICULTURAL remote sensing , *REMOTE-sensing images , *STANDARD deviations , *THEMATIC maps , *REMOTE sensing - Abstract
Wheat basic seedling number is one of the most important sources of the total number of wheat ears. In turn, the leading factor can also dominate the wheat yield per unit area. It is an essential prerequisite for the timely and accurate acquisition of the within-field spatial difference information of the wheat basic seedling number. The variable-rate topdressing of nitrogen fertilizer can then be implemented in the manner of precision agriculture. The population density of wheat tillers can often be regulated to realize the fertilizer reduction with a better yield. Unmanned Aerial Vehicle (UAV) remote sensing imagery can be efficiently obtained at the field level in recent years. However, the vegetation and background features can be only processed without considering the influence of mixed pixels of the imagery in the traditional agricultural UAV remote sensing applications. The accuracy and reliability of wheat basic seedling number inversion cannot fully meet the large-scale production in smart agriculture. In this study, the quantitative inversion accuracy of wheat basic seedling numbers was improved using the mixed pixel decomposition model of UAV remote sensing imagery. Firstly, the UAV remote sensing imagery was acquired with a spatial resolution of about 2.5 cm using DJI Mini drone. The relative radiometric calibration was then completed using the invariant target method. Furthermore, the endmembers of vegetation and soil, as well as the mixed pixels were extracted from the reflectance image, which accounted for 2.23%, 0.28%, and 97.49% of the pixels, respectively. The spectral signatures were acquired for the endmembers of vegetation and soil using the reflectance values. Consequently, the decomposition model was established using mixed pixels of UAV remote-sensing images. The linear decomposition was used to divide each mixed pixel into 2 components of vegetation and soil. The abundance data was acquired for each component. The vegetation abundance model was used to calculate the Fractional Vegetation Coverage (FVC) of the experimental field. The proportions of vegetation endmember and abundance were then evaluated over the total area of “1m and 2 rows”. Finally, a linear regression model was established between the FVC and the ground truth data of 15 sets of wheat basic seedling numbers. The determination coefficient R² was 0.87. Besides, the regression model was verified using 3 other ground truth data of wheat basic seedling numbers. The verification results show that the Root Mean Square Error (RMSE) was 1.97 seedlings/m² . The higher inversing accuracy was achieved in this case, compared with the average wheat basic seedling number of 217.442 seedlings/m² for the wheat field. A comparative experiment was performed on the FVC thematic maps. The traditional vegetation index method was used, including the Visible-band Difference Vegetation Index (VDVI), Green Red Difference Index (GRDI), and Green Red Ratio Index (GRRI). The linear regression models were then established between each FVC of VDVI, GRDI, GRRI, and ground truth data of wheat basic seedling number. The determination coefficient R² and RMSE were calculated as 0.79, 0.56, 0.47, and 6.06, 7.04 and 4.43 seedlings/m2, respectively. Therefore, better performance was achieved in the quantitative inversion model of the wheat basic seedling number using the mixed pixels decomposition of UAV remote sensing images. The findings can provide data support for the precise variable topdressing of nitrogen fertilizer at the tillering stage of wheat. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
10. تصنيف الصور الطيفية باستخدام خوارزمية فك المزج الطيفي غير الخطي وخوارزمية التصنيف بالاعتماد على الزاوية الطيفية
- Author
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انس رامز الفحام, ياسر عملة, and عيد العبود
- Subjects
REMOTE sensing ,THREE-dimensional imaging ,SURFACE of the earth ,MULTISPECTRAL imaging ,PIXELS ,CUBES ,SPECTRAL imaging - Abstract
Copyright of Association of Arab Universities Journal of Engineering Sciences (JAARU) is the property of Association of Arab Universities and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2022
- Full Text
- View/download PDF
11. Global Comparison of Leaf Area Index Products over Water-Vegetation Mixed Heterogeneous Surface Network (HESNet-WV)
- Author
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Chang Liu, Jing Li, Qinhuo Liu, Baodong Xu, Yadong Dong, Jing Zhao, Faisal Mumtaz, Chenpeng Gu, and Hu Zhang
- Subjects
validation ,LAI ,mixed pixel ,spatial heterogeneity ,Science - Abstract
Spatial land surface heterogeneities are widespread at various scales and represent a great challenge to leaf area index (LAI) retrievals and product validations. In this paper, considering the mixed water and vegetation pixels prevalent at moderate and low resolutions, we propose a methodological framework for conducting global comparisons of heterogeneous land surfaces based on criterion setting and a global search of high-resolution data. We construct a global network, Heterogeneous Surface Network aiming Water and Vegetation Mixture (HESNet-WV), comprised of three vegetation types: grassland, evergreen broadleaf forests (EBFs), and evergreen needle forests (ENFs). Validation is performed using the MCD15A3H Global 500-m/4-day and GLASS 500-m/8-day LAI products. As the water area fraction (WAF), LAI values and LAI inversion errors increase in the MODIS and GLASS products, the GLASS product errors (relative LAI error (RELAI): 94.43%, bias: 0.858) are lower than the MODIS product errors (RELAI: 124.05%, bias: 1.209). The result indicates that the proposed framework can be applied to evaluate the accuracy of LAI values in mixed water-vegetation pixels in different global LAI products.
- Published
- 2023
- Full Text
- View/download PDF
12. Assessment of Spectral-KMOD Composite Kernel-Based Supervised Noise Clustering Approach in Handling Nonlinear Separation of Classes
- Author
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SenGupta, Ishuita, Kumar, Anil, Dwivedi, Rakesh Kumar, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Hu, Yu-Chen, editor, Tiwari, Shailesh, editor, Mishra, Krishn K., editor, and Trivedi, Munesh C., editor
- Published
- 2019
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13. Deep-Sea Sediment Mixed Pixel Decomposition Based on Multibeam Backscatter Intensity Segmentation.
- Author
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Cui, Xiaodong, Yang, Fanlin, Wu, Ziyin, Zhang, Kai, Fan, Miao, and Ai, Bo
- Subjects
- *
BACKSCATTERING , *SEDIMENTS , *COMPOSITION of sediments , *OCEANOGRAPHIC maps , *FEATURE extraction , *OCEAN bottom , *ACOUSTIC emission testing - Abstract
The ability to accurately map the seabed sediments plays an important role in seabed habitat development and stakeholder decision-making. In conventional seabed sediment classification methods, maps of seabed sediment are provided in categorical form (sediment classes). Therefore, the prediction of the sediment compositions in multibeam observational units has become a difficult issue in using conventional methods. To tackle this challenge, a new strategy is developed to realize the subpixel decomposition of seabed sediments. A key attribute of the proposed sediment decomposition model is that it utilizes spatial–spectral information provided by multibeam backscatter angular responses (ARs). First, an AR feature extraction method utilizing a bidirectional sliding window is proposed and a $K$ -means clustering algorithm is used for segmentation. Second, a deep-sea sediment decomposition model based on the fuzzy method is constructed by selecting experimental samples that are distributed within a single clustering region. This model inverts the abundance of each sediment composition in the form of membership degrees. Finally, deep-sea multibeam survey data collected from the central Philippine Sea are used for verification. The overall mean square error and coefficient of determination reach 0.043 and 0.856, respectively. The experimental results show that the new method can accurately decompose deep-sea sediment compositions, thus providing a new technique for deep-sea acoustic sediment remote sensing and quantitative analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
14. Study on directional reflectivity characteristics analysis of mixed pixels using multi-angle spectral measurements.
- Author
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Zhang, Haonan, Wen, Xingping, Luo, Dayou, and Xu, Junlong
- Subjects
- *
PIXELS , *VISIBLE spectra , *AZIMUTH - Abstract
The influence of the detection direction on the quality of spectral data was not taken into account, which is catastrophic for some samples where the reflectivity direction was very different. To explore the directional characteristics of mixed pixels reflectivity, we used an ASD FieldSpec3 spectroradiometer to carry out multi-angle spectral measurement experiments in the laboratory, and the direction error model is established. As a result, the proportions of black area (PBA) and the observed azimuths (Φ) will affect the reflectivity of the mixed pixel in the visible light band. It is found that when the PBA is close to 0, the reflectivity distribution of mixed pixels is characterized by the reflected energy reflecting uniformly around the entire hemisphere space. When PBA is close to 1, there is a significant difference in the reflectivity of mixed pixels in 2π space. The direction error model better reflects the reflectivity changes caused by PBA and observed azimuth. The mean absolute error of the estimated reflectivity compared with the measured value is only 0.047. When the PBA is large, the estimation accuracy of the model is higher. When the PBA is small, and the observed azimuth is large, the accuracy of the model is slightly worse. The "two-block" mixed pixel is an ideal sample to satisfy the direction error model, while a dispersed "multi-block" mixed pixel is not applicable to the correction model. When conducting mixed pixel spectral measurement experiment, the influence of the detection azimuth on the spectral reflectivity should be fully considered, which is beneficial to improve the reliability of experiments on multi-angle spectral measurements of mixed pixels. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
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15. Loss of target information in full pixel and subpixel target detection in hyperspectral data with and without dimensionality reduction.
- Author
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Bhandari, Amrita and Tiwari, K. C.
- Abstract
In most hyperspectral target detection applications, targets are usually small and require both spatial as well as spectral detection. Hyperspectral imaging facilitates target detection (TD) applications greatly, however, due to large spectral content, hyperspectral data requires dimensionality reduction (DR) which also leads to loss of target information both at full pixel and subpixel level. Literature reports many DR and TD algorithms in practice. Several studies have focussed on assessing the loss of target information in DR, however, not much work seems to have been done to assess loss of target information in full pixel and subpixel TD in hyperspectral data with and without DR. This paper seeks to study various combinations of DR techniques combined with full pixel and subpixel TD algorithms. The results indicate that in the case of full pixel targets, both DR and TD contribute to the loss of target information, however, there is more loss of target information in the case when DR precedes TD in comparison to a case where TD is applied without DR. In the case of subpixel TD, however, there appears to be loss of subpixel target information in the case where TD alone is performed in comparison to a case where DR precedes TD. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
16. Characterization of the Sick LMS511-20100Pro Laser Range Finder for Simultaneous Localization and Mapping
- Author
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Zong, Wenpeng, Li, Guangyun, Li, Minglei, Wang, Li, Zhou, Yanglin, Hutchison, David, Series editor, Kanade, Takeo, Series editor, Kittler, Josef, Series editor, Kleinberg, Jon M., Series editor, Mattern, Friedemann, Series editor, Mitchell, John C., Series editor, Naor, Moni, Series editor, Pandu Rangan, C., Series editor, Steffen, Bernhard, Series editor, Terzopoulos, Demetri, Series editor, Tygar, Doug, Series editor, Weikum, Gerhard, Series editor, Huang, YongAn, editor, Wu, Hao, editor, Liu, Honghai, editor, and Yin, Zhouping, editor
- Published
- 2017
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17. Conclusions
- Author
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Chang, Chein-I and Chang, Chein-I
- Published
- 2017
- Full Text
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18. Nonlocal Band-Weighted Iterative Spectral Mixture Model for Hyperspectral Imagery Denoising.
- Author
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Yang, Longshan, Xu, Linlin, Peng, Junhuan, Song, Yongze, Wong, Alexander, and Clausi, David A.
- Subjects
- *
IMAGE denoising , *IMAGE reconstruction , *NOISE measurement , *MIXTURES , *NOISE control - Abstract
Although efficient hyperspectral image (HSI) denoising relies on complete and accurate description and modeling the spatial–spectral signal in HSI, the current approaches do not fully account for key characteristics of HSI, i.e., the mixed spectra effect, the spatial nonstationarity effect, and noise variance heterogeneity effect. To address this issue, this article presents a linear spectral mixture model with nonlocal means constraint (LSMM-NLMC), with the following advantages. First, LSMM-NLMC can effectively learn the signal in mixed pixels in HSI by estimating clean endmembers and abundances for image restoration. Second, LSMM-NLMC can efficiently address nonstationary spatial correlation effect by imposing NLMC on the latent scene signal. Last, LSMM-NLMC provides accurate noise characterization by accounting for noise variance heterogeneity effect using a band-dependent noise model and a band-weighted Mahalanobis distance for similarity measurement. A novel optimization method based on the expectation–maximization (EM) algorithm and the purified means approach is used to efficiently solve the resulting maximum a posterior (MAP) problem. The experiments on both simulated and real HSI data sets demonstrate that the visual quality and denoising accuracy are significantly improved by the proposed LSMM-NLMC compared with previous methods. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
19. 高分五号高光谱图像自编码网络非线性解混.
- Author
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韩, 竹, 高, 连如, 张, 兵, 孙, 旭, and 李, 庆亭
- Subjects
REMOTE sensing ,PIXELS ,SATELLITE-based remote sensing - Abstract
Copyright of Journal of Remote Sensing is the property of Editorial Office of Journal of Remote Sensing & Science Publishing Co. and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2020
- Full Text
- View/download PDF
20. Arctic tundra shrubification can obscure increasing levels of soil erosion in NDVI assessments of land cover derived from satellite imagery.
- Author
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Kodl, Georg, Streeter, Richard, Cutler, Nick, and Bolch, Tobias
- Subjects
- *
LAND cover , *THEMATIC mapper satellite , *LANDSAT satellites , *SOIL erosion , *REMOTE-sensing images , *NORMALIZED difference vegetation index , *TUNDRAS , *SPECTRAL reflectance - Abstract
Monitoring soil erosion in the Arctic tundra is complicated by the highly fragmentated nature of the landscape and the limited spatial resolution of even high-resolution satellite data. The expansion of shrubs across the Arctic has led to substantial changes in vegetation composition that alter the spectral reflectance and directly affect vegetation indices such as the normalized difference vegetation index (NDVI), which is widely applied for environmental monitoring. This change can mask soil erosion if datasets with too coarse spatial resolutions are used, as increases in NDVI driven by shrub expansion can obscure concurrent increases in barren land cover. Here we created land cover maps from a multispectral uncrewed aerial vehicle (UAV) and land cover survey and assessed satellite imagery from PlanetScope, Sentinel-2 and Landsat-8 for several areas in north-eastern Iceland. Additionally, we used a novel application of the Shannon evenness index (SHEI) to evaluate levels of pixel mixing. Our results show that shrub expansion can lead to spectral confusion, which can obscure soil erosion processes and emphasize the importance of considering spatial resolution when monitoring highly fragmented landscapes. We demonstrate that remote sensing data with a resolution < 3 m greatly improves the amount of information captured in an Icelandic tundra environment. The spatial resolution of Landsat data (30 m) is inadequate for environmental monitoring in our study area. We found that the best platform for monitoring tundra land cover is Sentinel-2 when used in combination with multispectral UAV acquisitions for validation. Our study has the potential to improve environmental monitoring capabilities by introducing the use of SHEI to assess pixel mixing and determine optimal spatial resolutions. This approach combined with comparing remote sensing imagery of different spatial and time scales significantly advances our comprehension of land cover changes, including greening and soil degradation, in the Arctic tundra. • Shrub expansion can mask increases in eroded areas in remote sensing data. • Shannon evenness index is a useful metric to assess pixel mixture. • Spatial resolutions < 3 m show a significant increase in information gain in Iceland. • Sentinel-2 performed best in combination with UAV in Arctic tundra monitoring. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
21. Spectral Unmixing Technique of HSI
- Author
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Wang, Liguo, Zhao, Chunhui, Wang, Liguo, and Zhao, Chunhui
- Published
- 2016
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22. Endmember Extraction Technique of HSI
- Author
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Wang, Liguo, Zhao, Chunhui, Wang, Liguo, and Zhao, Chunhui
- Published
- 2016
- Full Text
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23. Extraction and Spatio-Temporal Analysis of Impervious Surfaces over Dongying Based on Landsat Data
- Author
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Jiaqi Shen, Yanmin Shuai, Peixian Li, Yuxi Cao, and Xianwei Ma
- Subjects
impervious surface ,mixed pixel ,linear spectral mixing analysis ,endmember ,Science - Abstract
It is necessary to understand the relationship between the impervious surface area (ISA) distribution, variation trends and potential driving forces over Dongying, Shandong Province. We extracted ISA information from Landsat images with 3–5 year intervals during 1995 to 2018 using Minimum Noise Fraction (MNF) transform, Pixel Purity Index (PPI), and Linear Spectral Mixture Analysis (LSMA), followed by the analysis on three driving forces of ISA expansion (physical geography, socioeconomic factors, and urban cultural features). Our results show the retrieved ISA thematic map fit the limited requirement of root mean square error (RMSE). The correct classification accuracy of ISA is greater than 83.08%. Further, the cross–comparison exhibits the general consistent with the ISA distribution of the land use classification map published by the National Basic Geographic Information Center. The gradual increasing trend can be captured on the expansion of ISA from 1995 to 2018. Despite of the central region always shown as the high ISA density, it still keeps increasing annually and radiating the surrounding region, especially in the southward which has formed into a new large–scale and high intensity of ISA in 2015–2018. Though the ISA patches scattered in the west region or along the northern and eastern part of the ocean coastline are still small, the expansion trend of ISA can be detected. The expansion intensity index (EII) of ISA measuring the situation of its expansion changes from the lowest value 0.12% between 1995 and 2000 up to the highest 0.73% between 2000 and 2005. Richly endowed by nature, the city’s natural geographical environment provides an elevated chance of further urbanization. The rapid increase of regional economy provides a fundamental driving force for expanding ISAs. The development of urban culture promotes the sustainable development of ISAs. Our results provide a scientific basis for future urban land use management, construction planning, and environmental protection in Dongying.
- Published
- 2021
- Full Text
- View/download PDF
24. Assessment of FSDAF Accuracy on Cotton Yield Estimation Using Different MODIS Products and Landsat Based on the Mixed Degree Index with Different Surroundings
- Author
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Linghua Meng, Huanjun Liu, Susan L. Ustin, and Xinle Zhang
- Subjects
FSDAF ,mixed pixel ,cotton growth ,field scale ,MDI ,Chemical technology ,TP1-1185 - Abstract
Research on fusion modeling of high spatial and temporal resolution images typically uses MODIS products at 500 m and 250 m resolution with Landsat images at 30 m, but the effect on results of the date of reference images and the ‘mixed pixels’ nature of moderate-resolution imaging spectroradiometer (MODIS) images are not often considered. In this study, we evaluated those effects using the flexible spatiotemporal data fusion model (FSDAF) to generate fusion images with both high spatial resolution and frequent coverage over three cotton field plots in the San Joaquin Valley of California, USA. Landsat images of different dates (day-of-year (DOY) 174, 206, and 254, representing early, middle, and end stages of the growing season, respectively) were used as reference images in fusion with two MODIS products (MOD09GA and MOD13Q1) to produce new time-series fusion images with improved temporal sampling over that provided by Landsat alone. The impact on the accuracy of yield estimation of the different Landsat reference dates, as well as the degree of mixing of the two MODIS products, were evaluated. A mixed degree index (MDI) was constructed to evaluate the accuracy and time-series fusion results of the different cotton plots, after which the different yield estimation models were compared. The results show the following: (1) there is a strong correlation (above 0.6) between cotton yield and both the Normalized Difference Vegetation Index (NDVI) from Landsat (NDVIL30) and NDVI from the fusion of Landsat with MOD13Q1 (NDVIF250). (2) Use of a mid-season Landsat image as reference for the fusion of MODIS imagery provides a better yield estimation, 14.73% and 17.26% higher than reference images from early or late in the season, respectively. (3) The accuracy of the yield estimation model of the three plots is different and relates to the MDI of the plots and the types of surrounding crops. These results can be used as a reference for data fusion for vegetation monitoring using remote sensing at the field scale.
- Published
- 2021
- Full Text
- View/download PDF
25. Contextual Soft Classification Approaches for Crops Identification Using Multi-sensory Remote Sensing Data: Machine Learning Perspective for Satellite Images
- Author
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Khobragade, Anand N., Raghuwanshi, Mukesh M., Kacprzyk, Janusz, Series editor, Silhavy, Radek, editor, Senkerik, Roman, editor, Oplatkova, Zuzana Kominkova, editor, Prokopova, Zdenka, editor, and Silhavy, Petr, editor
- Published
- 2015
- Full Text
- View/download PDF
26. Crop classification with WorldView-2 imagery using Support Vector Machine comparing texture analysis approaches and grey relational analysis in Jianan Plain, Taiwan.
- Author
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Wan, Shiuan and Chang, Shih-Hsun
- Subjects
- *
GREY relational analysis , *SUPPORT vector machines , *REMOTE sensing , *THEMATIC maps , *LAND cover - Abstract
Crop production estimation is of crucial concern in Taiwan, and the government has invested much effort including employing manpower and technologies. Artificial intelligence or data mining technology have been successfully applied on land-cover recognition of remote-sensing imagery. Most studies are employing a pixel-based classification approach to generate the thematic map of land covers. Few studies consider the spatial correlation of adjacent pixels of the same category. Mixed pixel issues usually degrade the prediction accuracy according to previous studies. It is thus the main goal of the present study to explore the spatial effect of adjacent pixels on land-cover mapping. The study region is a WorldView-2 satellite image in Jianan Plain, Taiwan, taken in 2014. Support Vector Machine is used as the underlying classifier. In addition to the eight spectral band intensities, normalized difference vegetation index and grey-level co-occurrence matrix (GLCM) textures are included as ancillary attributes. Furthermore, grey relational analysis (GRA) is employed to assist in classifying croplands. The findings of this study can be summarized as follows: (1) GLCM texture information improves classification accuracy marginally and renders slightly better thematic map, (2) GRA is used to acquire the most important factors concerning discriminating land covers, (3) grey relational grade threshold, a metric designed through GRA, can be used to locate uncertain region of a specified crop, which is possibly caused by mixed pixels. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
27. Research on method of high-precision 3D scene optical remote sensing imaging simulation.
- Author
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Wang, Jun-Feng, Chen, Zhen-Ting, Hu, Xue-you, Lin, Chuan-Wen, Li, Cui-Hua, Hong, Lei, and Zha, Chang-Jun
- Subjects
- *
OPTICAL remote sensing , *TEXTURE mapping , *RAY tracing , *VISIBLE spectra , *REMOTE sensing - Abstract
Aiming at the traditional optical remote sensing imaging simulation(ORSIS) method can't meet the requirements of high resolution and precision quantitative remote sensing application, this paper proposes a centimeter-scale three-dimensional scene ORSIS method based on visible light and near infrared. By classifying the texture image of the feature model in the 3D scene, the material texture mapping method is used to distinguish the different materials in the single facet without increasing the facet. Using ray tracing to calculate the radiance at the entrance, the bidirectional reflection characteristics of the target material and the mixed pixel effect are considered. Finally, by comparing the simulation result image with the radiance of the real image taken by GF-2, the relative error between the two is less than 10%. The results show that the method can provide a reference for the research of high-precision 3D digital scenes ORSIS. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
28. Modeling of Mixed-Pixel Clumping Index From Remote Sensing Data and Its Evaluation.
- Author
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Ma, Qingmiao, Li, Yingjie, Li, Jing, and Liu, Qinhuo
- Abstract
The clumping index (CI) is a canopy structure parameter that describes the dispersion or grouping of leaves. Previously, it has been estimated based on the normalized difference between hotspot and darkspot (NDHD), which is derived from multi-angle remote sensing data. However, currently it is impossible to derive CI from NDHD for a large area at a spatial resolution finer than 275 m since such fine multi-angle data are unavailable. In this study, an algorithm of the mixed-pixel clumping index (MPCI) was implemented, and an MPCI map of China's landmass at 1 km resolution was derived from the HJ-1A/1B data at 30 m resolution. The MPCI map was compared with the previous NDHD CI derived from the moderate resolution imaging spectroradiometer (MODIS). The correlation of these two datasets was greater than 0.9, and the mean bias was approximately 0.1. Indirectly, the MPCI map was applied to an effective leaf area index (LAI) product to derive true LAI. Using the MODIS LAI product as a reference, we found that the coefficient of determination was improved from 0.72 to 0.80, and the root mean squared error was reduced from 0.53 to 0.35 m2/m2 after the effective LAI is corrected by this MPCI map, suggesting that this MPCI map is comparable to the NDHD CI. Although our algorithm is currently tested at 1 km resolution, potentially, it can be applied to higher spatial resolution than 275 m for mapping LAI and carbon cycle modeling before these multi-angle data at higher resolution are available. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
29. A Modeling Approach for Predicting the Resolution Capability in Terrestrial Laser Scanning
- Author
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Sukant Chaudhry, David Salido-Monzú, and Andreas Wieser
- Subjects
terrestrial laser scanning ,TLS ,scanning resolution ,resolution capability ,mixed pixel ,beam diameter ,Science - Abstract
The minimum size of objects or geometrical features that can be distinguished within a laser scanning point cloud is called the resolution capability (RC). Herein, we develop a simple analytical expression for predicting the RC in angular direction for phase-based laser scanners. We start from a numerical approximation of the mixed-pixel bias which occurs when the laser beam simultaneously hits surfaces at grossly different distances. In correspondence with previous literature, we view the RC as the minimum angular distance between points on the foreground and points on the background which are not (severely) affected by a mixed-pixel bias. We use an elliptical Gaussian beam for quantifying the effect. We show that the surface reflectivities and the distance step between foreground and background have generally little impact. Subsequently, we derive an approximation of the RC and extend it to include the selected scanning resolution, that is, angular increment. We verify our model by comparison to the resolution capabilities empirically determined by others. Our model requires parameters that can be taken from the data sheet of the scanner or approximated using a simple experiment. We describe this experiment herein and provide the required software on GitHub. Our approach is thus easily accessible, enables the prediction of the resolution capability with little effort and supports assessing the suitability of a specific scanner or of specific scanning parameters for a given application.
- Published
- 2021
- Full Text
- View/download PDF
30. Varying effects of tree cover on relationships between satellite-observed vegetation greenup date and spring temperature across Eurasian boreal forests.
- Author
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Ding, Chao, Meng, Yuanyuan, Huang, Wenjiang, and Xie, Qiaoyun
- Published
- 2023
- Full Text
- View/download PDF
31. Sub-Pixel Mapping Based on MAP Model and Spatial Attraction Theory for Remotely Sensed Image
- Author
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Ke Wu, Qian Du, Xiangyun Hu, and Xianmin Wang
- Subjects
Mixed pixel ,sub-pixel mapping ,MAP ,PSA ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
There are a lot of mixed pixels in the remotely sensed imagery, which can seriously limit the utility of classification. Sub-pixel mapping (SPM) is a promising technique to solve this problem. It can generate a fine resolution land cover map from coarse resolution fractional images by predicting the spatial locations of different land cover classes at sub-pixel scale.However, the accuracy and detail are always limited. Especially when the scale factor is large among sub-pixels per pixel, the data volumes are amplified and the sub-pixel distribution becomes complex. The traditional methods are carried out only by the fractions of land cover and the spatial dependence theory, which cannot satisfy the requirement of the SPM. For avoiding the above flaw, a new SPM method based on maximum a posteriori (MAP) model with subpixel/pixel spatial attraction theory aimed at the largescale factor is proposed. First, MAP is proposed to improve the resolution of the fractional images and obtain the initial sub-pixel locations; after that, the pixel swapping algorithm is used to optimize and produce the final SPM result. In this paper, the proposed model is tested by a simple simulated font image and real remotely sensed imagery, which can both demonstrate that it can outperform traditional algorithm with a more accurate sub-pixel scale land cover map.
- Published
- 2017
- Full Text
- View/download PDF
32. Sub-Pixel Mapping Model Based on Total Variation Regularization and Learned Spatial Dictionary
- Author
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Bouthayna Msellmi, Daniele Picone, Zouhaier Ben Rabah, Mauro Dalla Mura, and Imed Riadh Farah
- Subjects
hyperspetral image ,mixed pixel ,spectral un-mixing ,inverse problem ,sub-pixel mapping ,K-SVD dictionary learning ,Science - Abstract
In this research study, we deal with remote sensing data analysis over high dimensional space formed by hyperspectral images. This task is generally complex due to the large spectral, spatial richness, and mixed pixels. Thus, several spectral un-mixing methods have been proposed to discriminate mixing spectra by estimating the classes and their presence rates. However, information related to mixed pixel composition is very interesting for some applications, but it is insufficient for many others. Thus, it is necessary to have much more data about the spatial localization of the classes detected during the spectral un-mixing process. To solve the above-mentioned problem and specify the spatial location of the different land cover classes in the mixed pixel, sub-pixel mapping techniques were introduced. This manuscript presents a novel sub-pixel mapping process relying on K-SVD (K-singular value decomposition) learning and total variation as a spatial regularization parameter (SMKSVD-TV: Sub-pixel Mapping based on K-SVD dictionary learning and Total Variation). The proposed approach adopts total variation as a spatial regularization parameter, to make edges smooth, and a pre-constructed spatial dictionary with the K-SVD dictionary training algorithm to have more spatial configurations at the sub-pixel level. It was tested and validated with three real hyperspectral data. The experimental results reveal that the attributes obtained by utilizing a learned spatial dictionary with isotropic total variation allowed improving the classes sub-pixel spatial localization, while taking into account pre-learned spatial patterns. It is also clear that the K-SVD dictionary learning algorithm can be applied to construct a spatial dictionary, particularly for each data set.
- Published
- 2021
- Full Text
- View/download PDF
33. A Data-Driven Approach for Real-Time Full Body Pose Reconstruction from a Depth Camera
- Author
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Baak, Andreas, Müller, Meinard, Bharaj, Gaurav, Seidel, Hans-Peter, Theobalt, Christian, Fossati, Andrea, editor, Gall, Juergen, editor, Grabner, Helmut, editor, Ren, Xiaofeng, editor, and Konolige, Kurt, editor
- Published
- 2013
- Full Text
- View/download PDF
34. Ground Truth for Evaluating Time of Flight Imaging
- Author
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Nair, Rahul, Meister, Stephan, Lambers, Martin, Balda, Michael, Hofmann, Hannes, Kolb, Andreas, Kondermann, Daniel, Jähne, Bernd, Hutchison, David, editor, Kanade, Takeo, editor, Kittler, Josef, editor, Kleinberg, Jon M., editor, Mattern, Friedemann, editor, Mitchell, John C., editor, Naor, Moni, editor, Nierstrasz, Oscar, editor, Pandu Rangan, C., editor, Steffen, Bernhard, editor, Sudan, Madhu, editor, Terzopoulos, Demetri, editor, Tygar, Doug, editor, Vardi, Moshe Y., editor, Weikum, Gerhard, editor, Grzegorzek, Marcin, editor, Theobalt, Christian, editor, Koch, Reinhard, editor, and Kolb, Andreas, editor
- Published
- 2013
- Full Text
- View/download PDF
35. Understanding and Ameliorating Mixed Pixels and Multipath Interference in AMCW Lidar
- Author
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Godbaz, John P., Dorrington, Adrian A., Cree, Michael J., Remondino, Fabio, editor, and Stoppa, David, editor
- Published
- 2013
- Full Text
- View/download PDF
36. Research and Application of Single Physical Volume Method in Analyzing Mineral Spectroscopy
- Author
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Liu, Jia, Yao, Guoqing, Gan, Fuping, Qian, Zhihong, editor, Cao, Lei, editor, Su, Weilian, editor, Wang, Tingkai, editor, and Yang, Huamin, editor
- Published
- 2012
- Full Text
- View/download PDF
37. Retrieval of Conifer LAI Based on the Multiple-Angle Model
- Author
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Yan, Tang, Guihua, Han, Qiang, Wang, Kacprzyk, Janusz, editor, and Jiang, Liangzhong, editor
- Published
- 2012
- Full Text
- View/download PDF
38. Extending AMCW Lidar Depth-of-Field Using a Coded Aperture
- Author
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Godbaz, John P., Cree, Michael J., Dorrington, Adrian A., Hutchison, David, Series editor, Kanade, Takeo, Series editor, Kittler, Josef, Series editor, Kleinberg, Jon M., Series editor, Mattern, Friedemann, Series editor, Mitchell, John C., Series editor, Naor, Moni, Series editor, Nierstrasz, Oscar, Series editor, Pandu Rangan, C., Series editor, Steffen, Bernhard, Series editor, Sudan, Madhu, Series editor, Terzopoulos, Demetri, Series editor, Tygar, Doug, Series editor, Vardi, Moshe Y., Series editor, Weikum, Gerhard, Series editor, Kimmel, Ron, editor, Klette, Reinhard, editor, and Sugimoto, Akihiro, editor
- Published
- 2011
- Full Text
- View/download PDF
39. Increasing the Accuracy of Mapping Urban Forest Carbon Density by Combining Spatial Modeling and Spectral Unmixing Analysis
- Author
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Hua Sun, Guangping Qie, Guangxing Wang, Yifan Tan, Jiping Li, Yougui Peng, Zhonggang Ma, and Chaoqin Luo
- Subjects
forest carbon ,integration ,Landsat 8 image ,k-nearest neighbors ,mapping ,mixed pixel ,regression ,Shenzhen City ,vegetation fraction ,Science - Abstract
Accurately mapping urban vegetation carbon density is challenging because of complex landscapes and mixed pixels. In this study, a novel methodology was proposed that combines a linear spectral unmixing analysis (LSUA) with a linear stepwise regression (LSR), a logistic model-based stepwise regression (LMSR) and k-Nearest Neighbors (kNN), to map the forest carbon density of Shenzhen City of China, using Landsat 8 imagery and sample plot data collected in 2014. The independent variables that contributed to statistically significantly improving the fit of a model to data and reducing the sum of squared errors were first selected from a total of 284 spectral variables derived from the image bands. The vegetation fraction from LSUA was then added as an independent variable. The results obtained using cross-validation showed that: (1) Compared to the methods without the vegetation information, adding the vegetation fraction increased the accuracy of mapping carbon density by 1%–9.3%; (2) As the observed values increased, the LSR and kNN residuals showed overestimates and underestimates for the smaller and larger observations, respectively, while LMSR improved the systematical over and underestimations; (3) LSR resulted in illogically negative and unreasonably large estimates, while KNN produced the greatest values of root mean square error (RMSE). The results indicate that combining the spatial modeling method LMSR and the spectral unmixing analysis LUSA, coupled with Landsat imagery, is most promising for increasing the accuracy of urban forest carbon density maps. In addition, this method has considerable potential for accurate, rapid and nondestructive prediction of urban and peri-urban forest carbon stocks with an acceptable level of error and low cost.
- Published
- 2015
- Full Text
- View/download PDF
40. Remote Sensing, GIS, and Urban Analysis
- Author
-
Bhatta, Basudeb and Bhatta, Basudeb
- Published
- 2010
- Full Text
- View/download PDF
41. Separating snow and forest temperatures with thermal infrared remote sensing.
- Author
-
Lundquist, Jessica D., Chickadel, Chris, Cristea, Nicoleta, Currier, William Ryan, Henn, Brian, Keenan, Eric, and Dozier, Jeff
- Subjects
- *
REMOTE sensing of the atmosphere , *MODIS (Spectroradiometer) , *LAND surface temperature , *SNOW cover , *SURFACE temperature - Abstract
Thermal infrared sensing from space is a well-developed field, but mixed pixels pose a problem for many applications. We present a field study in Dana Meadows, Yosemite National Park, California to scale from point (~2-m resolution) to aerial (~5-m resolution gridded, 1 km × 6 km extent) to satellite (MODIS, ~1000-m resolution, global extent) observations. We demonstrate how multiple thermal bands on MODIS can be used to separate snow and forest temperatures and determine the fractional snow-covered area ( f SCA ) over a 3 km × 3 km array of 9 MODIS grid cells. During the day, visible, near-infrared, and shortwave-infrared bands provide a first guess of f SCA and help to constrain the solution. This technique, which has estimated errors <2 °C and 10% f SCA for many expected conditions, enables better understanding of the snowpack energy balance, atmospheric inversions and cold air pools, and forest health. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
42. Decomposition Mixed Pixels of Remote Sensing Image Based on 2-DWT and Kernel ICA
- Author
-
Xia, Huaiying, Guo, Ping, Hutchison, David, editor, Kanade, Takeo, editor, Kittler, Josef, editor, Kleinberg, Jon M., editor, Mattern, Friedemann, editor, Mitchell, John C., editor, Naor, Moni, editor, Nierstrasz, Oscar, editor, Pandu Rangan, C., editor, Steffen, Bernhard, editor, Sudan, Madhu, editor, Terzopoulos, Demetri, editor, Tygar, Doug, editor, Vardi, Moshe Y., editor, Weikum, Gerhard, editor, Leung, Chi Sing, editor, Lee, Minho, editor, and Chan, Jonathan H., editor
- Published
- 2009
- Full Text
- View/download PDF
43. Pixel Coverage Segmentation for Improved Feature Estimation
- Author
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Sladoje, Nataša, Lindblad, Joakim, Hutchison, David, Series editor, Kanade, Takeo, Series editor, Kittler, Josef, Series editor, Kleinberg, Jon M., Series editor, Mattern, Friedemann, Series editor, Mitchell, John C., Series editor, Naor, Moni, Series editor, Nierstrasz, Oscar, Series editor, Pandu Rangan, C., Series editor, Steffen, Bernhard, Series editor, Sudan, Madhu, Series editor, Terzopoulos, Demetri, Series editor, Tygar, Doug, Series editor, Vardi, Moshe Y., Series editor, Weikum, Gerhard, Series editor, Foggia, Pasquale, editor, Sansone, Carlo, editor, and Vento, Mario, editor
- Published
- 2009
- Full Text
- View/download PDF
44. Parallel Spatial-Spectral Processing of Hyperspectral Images
- Author
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Plaza, Antonio J., Kacprzyk, Janusz, editor, Graña, Manuel, editor, and Duro, Richard J., editor
- Published
- 2008
- Full Text
- View/download PDF
45. Quantitative Colocalisation Imaging: Concepts, Measurements, and Pitfalls
- Author
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Oheim, Martin, Li, Dongdong, Shorte, Spencer L., editor, and Frischknecht, Friedrich, editor
- Published
- 2007
- Full Text
- View/download PDF
46. Towards Real-Time Compression of Hyperspectral Images Using Virtex-II FPGAs
- Author
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Plaza, Antonio, Hutchison, David, editor, Kanade, Takeo, editor, Kittler, Josef, editor, Kleinberg, Jon M., editor, Mattern, Friedemann, editor, Mitchell, John C., editor, Naor, Moni, editor, Nierstrasz, Oscar, editor, Pandu Rangan, C., editor, Steffen, Bernhard, editor, Sudan, Madhu, editor, Terzopoulos, Demetri, editor, Tygar, Doug, editor, Vardi, Moshe Y., editor, Weikum, Gerhard, editor, Kermarrec, Anne-Marie, editor, Bougé, Luc, editor, and Priol, Thierry, editor
- Published
- 2007
- Full Text
- View/download PDF
47. A New Approach to Decomposition of Mixed Pixels Based on Orthogonal Bases of Data Space
- Author
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Tao, Xuetao, Wang, Bin, Zhang, Liming, Hutchison, David, editor, Kanade, Takeo, editor, Kittler, Josef, editor, Kleinberg, Jon M., editor, Mattern, Friedemann, editor, Mitchell, John C., editor, Naor, Moni, editor, Nierstrasz, Oscar, editor, Rangan, C. Pandu, editor, Steffen, Bernhard, editor, Sudan, Madhu, editor, Terzopoulos, Demetri, editor, Tygar, Doug, editor, Vardi, Moshe Y., editor, Weikum, Gerhard, editor, Huang, De-Shuang, editor, Heutte, Laurent, editor, and Loog, Marco, editor
- Published
- 2007
- Full Text
- View/download PDF
48. Advances in Urban Remote Sensing: Examples From Berlin (Germany)
- Author
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Hostert, Patrick, Netzband, Maik, editor, Stefanov, William L., editor, and Redman, Charles, editor
- Published
- 2007
- Full Text
- View/download PDF
49. Construction of Fast and Robust N-FINDR Algorithm
- Author
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Wang, Liguo, Jia, Xiuping, Zhang, Ye, Thoma, M., editor, Morari, M., editor, Huang, De-Shuang, editor, Li, Kang, editor, and Irwin, George William, editor
- Published
- 2006
- Full Text
- View/download PDF
50. Combination of Linear Support Vector Machines and Linear Spectral Mixed Model for Spectral Unmixing
- Author
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Wang, Liguo, Zhang, Ye, Zhao, Chunhui, Thoma, M., editor, Morari, M., editor, Huang, De-Shuang, editor, Li, Kang, editor, and Irwin, George William, editor
- Published
- 2006
- Full Text
- View/download PDF
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