63 results on '"Kaminsky, E. J."'
Search Results
2. Textural neural network and version space classifiers for remote sensing.
- Author
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Kaminsky, E. J., Barad, H., and Brown, W.
- Published
- 1997
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- View/download PDF
3. Determination of the Time of Energy Return from Beamformed Data
- Author
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NAVAL RESEARCH LAB STENNIS SPACE CENTER MS, Kaminsky, E. J., Martinez, A. B., Bourgeois, B. S., Zabounidis, C., Capell, W. J., NAVAL RESEARCH LAB STENNIS SPACE CENTER MS, Kaminsky, E. J., Martinez, A. B., Bourgeois, B. S., Zabounidis, C., and Capell, W. J.
- Abstract
Multibeam bathymetric sonar systems such as the Sonar Array Survey System (SASS), the Sea Beam, and the Sea Beam 2000, are capable of collecting data which, after proper processing, may be used to map the bottom of the ocean. The sonar energy form the projector array impinges the ocean bottom as a narrow swath perpendicular to the ship's heading. The echo from this swath is received by an array of hydrophones mounted athwartships. Beamforming permits good reception of energy propagating in a certain direction while attenuating energy propagating in other directions, and may be performed in hardware or software. Beamformed data gives a time history of the energy received from each look direction
- Published
- 1993
4. COMPARING DIFFERENT MACHINE LEARNING OPTIONS TO MAP BARK BEETLE INFESTATIONS IN CROATIA.
- Author
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Kranjčić, N., Cetl, V., Matijević, H., and Markovinović, D.
- Subjects
BARK beetles ,MACHINE learning ,ARTIFICIAL neural networks ,SUPPORT vector machines ,REMOTE-sensing images ,K-nearest neighbor classification - Abstract
This paper presents different approaches to map bark beetle infested forests in Croatia. Bark beetle infestation presents threat to forest ecosystems. Due to large unapproachable area, it also presents difficulties in mapping infested areas. This paper analyses available machine learning options in open-source software QGIS and SAGA GIS. All options are performed on Copernicus data, Sentinel 2 satellite imagery. Machine learning and classification options are maximum likelihood classifier, minimum distance, artificial neural network, decision tree, K Nearest Neighbor, random forest, support vector machine, spectral angle mapper and Normal Bayes. Kappa values respectively are: 0.71; 0.72; 0.81; 0.68; 0.69; 0.75; 0.26; 0.60; 0.41 which shows highest classification accuracy for artificial neural networks method and lowest for support vector machine accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
5. Remote Sensing Based Land Cover Classification Using Machine Learning and Deep Learning: A Comprehensive Survey.
- Author
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Mitra, Soma and Basu, Saikat
- Subjects
DEEP learning ,ZONING ,MACHINE learning ,REMOTE sensing ,LAND cover ,REMOTE-sensing images - Abstract
Since the 1990s, remote sensing images have been used for land cover classification combined with Machine Learning algorithms. The satellites and airborne sensors pass over a specific point of land surface periodically, it is possible to assess the change in land cover over a long time. With the advent of Machine Learning (ML) methods, automated land cover classification has been at the center of research for the last few decades. From 2015 forward, a technical shift has been noticed with the emergence of several branches of Neural Networks (NN) and Deep Learning (DL). This paper examines current practices, problems, and trends in satellite image processing. This formal review focused on the summarization of major classification approaches from 1995. Two dominant research trends have been noticed in automated land cover classification, e.g., per pixel and subpixel analysis. Classical machine learning algorithms and deep learning methods are mainly used for per-pixel analysis, whereas fuzzy logic algorithms are used for sub-pixel analysis. The current article includes the research gap in automated land cover classification to provide comprehensive guidance for subsequent research direction. [ABSTRACT FROM AUTHOR]
- Published
- 2023
6. Neural network classification of remote-sensing data
- Author
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Miller, D. M., Kaminsky, E. J., and Rana, S.
- Published
- 1995
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- View/download PDF
7. A Comprehensive Study of Past, Present, and Future of Spectrum Sharing and Information Embedding Techniques in Joint Wireless Communication and Radar Systems.
- Author
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Munir, Muhammad Fahad, Basit, Abdul, Khan, Wasim, Saleem, Ahmad, and Al-salehi, AbdulRahman
- Subjects
WIRELESS communications ,INFORMATION sharing ,QUALITY of service ,ERROR rates ,ARTIFICIAL joints - Abstract
Wireless spectrum is a limited resource, and the rapid increase in demand for wireless communication-based services is increasing day by day. Hence, maintaining a good quality of service, high data rate, and reliability is the need of the day. Thus, we need to apportion the available spectrum in an efficient manner. Dual-Function Radar and Communication (DFRC) is an emerging field and bears vital importance for both civil and military applications for the last few years. Since hybridization of wireless communication and radar designs provoke diverse challenges, e.g., interference mitigation, secure mobile communication, improved bit error rate (BER), and data rate enhancement without compromising the radar performance, this paper reviews the state-of-the-art developments in the spectrum shared between mobile communication and radars in terms of coexistence, collaboration, cognition, and cooperation. Compared to the existing surveys, we explore an open research issue on radar and mobile communication operating with mutual benefits based on collaboration in terms of spectrum sharing. Additionally, this paper provides important perspectives for future research of DFRC technology. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
8. Investigating the capabilities of multispectral remote sensors data to map alteration zones in the Abhar area, NW Iran.
- Author
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Bahrami, Yousef, Hassani, Hossein, and Maghsoudi, Abbas
- Subjects
HYDROTHERMAL alteration ,REMOTE sensing ,MULTISPECTRAL imaging ,SUPPORT vector machines ,MACHINE learning ,ARTIFICIAL neural networks - Abstract
Economic mineralization is often associated with alterations that are identifiable by remote sensing coupled geological analysis. The present paper aims to investigate the capabilities of Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER), Landsat-8 and Sentinel-2 data to map iron oxide and hydrothermally alteration zones in the Abhar area, NW Iran. To achieve this goal, the principal component analysis (PCA) and two machine learning methods including support vector machine (SVM) and artificial neural network (ANN) were employed. PCA method was carried out on four bands of all data and then the appropriate principal components were selected to map alterations. Due to the high precision of ASTER data within the short-wave infrared range, these data results are more satisfactory compared with Landsat-8 and Sentinel-2 sensors in detecting hydrothermally alterations through the PCA technique. Based on the obtained maps, the performance of all data types was approximately similar in the detection of iron oxide zones. Our desired data were classified by two methods of SVM and ANN. The results of these algorithms were presented as confusion matrix. According to these results, for hydrothermally alterations, ASTER data showed better performance in both SVM and ANN than other datasets by gaining values greater than 90%. These data did not perform well in the iron oxide zones detection, while Landsat-8 and Sentinel-2 have been more successful. For iron oxide, based on confusion matrix, Landsat-8 data have obtained the values of 78% and 79% through SVM and ANN algorithms, respectively, and also Sentinel-2 has acquired the values of 88.11% and 90.55% via SVM and ANN, respectively. Therefore, to map iron oxide zones, Sentinel-2 data are more favorable than Landsat-8 data. In addition, the ANN algorithm in ASTER data has represented the highest overall accuracy and Kappa coefficient with the values of 88.73% and 0.8453, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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9. 基于无人机低空遥感的水稻田间杂草分布图研究.
- Author
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朱 圣, 邓继忠, 张亚莉, 杨 畅, 严智威, and 谢尧庆
- Abstract
Copyright of Journal of South China Agricultural University is the property of Gai Kan Bian Wei Hui 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
10. PV‐betriebene Umkehrosmoseanlage zur Meerwasserentsalzung – Modellierung und Analyse verschiedener Energieversorgungsvarianten.
- Author
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Sanna, Anas, Kaltschmitt, Martin, and Ernst, Mathias
- Subjects
SALINE water conversion ,REVERSE osmosis ,ELECTRICAL energy ,SEAWATER - Abstract
Copyright of Chemie Ingenieur Technik (CIT) is the property of Wiley-Blackwell 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
- 2019
- Full Text
- View/download PDF
11. Synthetic retrieval of hourly net ecosystem exchange using the neural network model with combined MI and GOCI geostationary sensor datasets and ground-based measurements.
- Author
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Yeom, Jong-Min, Deo, Ravinesh, Chun, Junghwa, Hong, Jinkyu, Kim, Dong-Su, Han, Kyung-Soo, and Cho, Jaeil
- Subjects
ECOSYSTEM dynamics ,ECOLOGY ,RESOLUTION (Chemistry) ,STEREOCHEMISTRY ,NEURAL circuitry - Abstract
Net ecosystem carbon dioxide (CO
2 ) exchange (NEE) is a key parameter for understanding the terrestrial plant ecosystems, but it is difficult to monitor or predict over large areas at fine temporal resolutions. In this research, we estimated the hourly NEE using a combination of the integrated neural network (NN) model with geostationary satellite imagery to overcome the limitations of existing daily polar orbiting satellite-derived carbon flux products. Two sets of satellite imageries (i.e. the meteorological imager (MI) and geostationary ocean colour imager (GOCI) aboard communication, ocean, and meteorological satellite (COMS)) and CO2 flux data derived from eddy covariance measurements were used to verify the feasibility of applying hourly geostationary satellite imagery with an NN-based approach for estimating NEE at high temporal resolutions. For the NN model, the optimum neuronal architecture was established using an NN with one hidden layer that was trained using the Levenberg-Marquardt back propagation algorithm. The hourly NEE values estimated in test period from the NN model using the combined COMS MI and GOCI imagery and ground measurements as model inputs were compared with the eddy covariance NEE values from the measurement tower, which yielded reliable statistical agreement. The hourly NEE results from the NNmodel based on COMS MI and GOCI imagery and ground measurement data had the highest accuracy (RMSE = 2.026 ìmol m-2 s-2 , R = 0.975), while the root mean square error (RMSE) and the regression coefficient (R) generated by the NN model based on satellite imagery as the sole input variable were relatively lower (RMSE = 3-2 30 ìmol m-2 s-2 , R = 0.952). Although the simulations for the satellite-only NEE were showed as lower accuracy than the NN model that included all input variables, the hourly variations in NEE also appeared to describe its daily growth and development pattern well, indicating the possibility of deriving hourly-based products from the proposed NN model using geostationary satellite data as inputs. [ABSTRACT FROM AUTHOR]- Published
- 2017
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12. An Augmented Strapdown Inertial Navigation System using Jerk and Jounce of Motion for a Flying Robot.
- Author
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Bayat, Milad and Atashgah, MA Amiri
- Subjects
INERTIAL navigation systems ,FLYING machines ,KALMAN filtering ,GLOBAL Positioning System ,COMPUTER algorithms - Abstract
This paper offers an algorithm for enhancement of positioning accuracy of a quad-rotor flying robot, based on jerk and jounce of motion. The suggested method utilises the first and second numerical derivatives of the vehicle's acceleration and augments the mathematical model in the estimation process. For this purpose, the Kalman Filter (KF) is implemented for integration of a Strapdown Inertial Navigation System (SINS) and Global Navigation Satellite System (GNSS). The required data are collected from a low-cost/quality Micro Electromechanical Sensors (MEMS) during an assisted flight. For increasing the precision and accuracy of the collected data, all instruments including accelerometers, gyroscopes and magnetometers are calibrated before the experiments. Moreover, to reduce and limit the measurement noises of the MEMS sensor, a low-pass filter is applied; this is while sensors in the autopilot are affected by high levels of noise and drift, which makes them inappropriate for accurate positioning. The experimental results exhibit an improvement in positioning and altitude sensing through augmentation of the loosely coupled SINS/GNSS navigation method. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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- View/download PDF
13. Classification for High Resolution Remote Sensing Imagery Using a Fully Convolutional Network.
- Author
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Gang Fu, Changjun Liu, Rong Zhou, Tao Sun, and Qijian Zhang
- Subjects
ARTIFICIAL neural networks ,DEEP learning ,IMAGE segmentation ,SEMANTIC computing ,COEFFICIENTS (Statistics) - Abstract
As a variant of Convolutional Neural Networks (CNNs) in Deep Learning, the Fully Convolutional Network (FCN) model achieved state-of-the-art performance for natural image semantic segmentation. In this paper, an accurate classification approach for high resolution remote sensing imagery based on the improved FCN model is proposed. Firstly, we improve the density of output class maps by introducing Atrous convolution, and secondly, we design a multi-scale network architecture by adding a skip-layer structure to make it capable for multi-resolution image classification. Finally, we further refine the output class map using Conditional Random Fields (CRFs) post-processing. Our classification model is trained on 70 GF-2 true color images, and tested on the other 4 GF-2 images and 3 IKONOS true color images. We also employ object-oriented classification, patch-based CNN classification, and the FCN-8s approach on the same images for comparison. The experiments show that compared with the existing approaches, our approach has an obvious improvement in accuracy. The average precision, recall, and Kappa coefficient of our approach are 0.81, 0.78, and 0.83, respectively. The experiments also prove that our approach has strong applicability for multi-resolution image classification. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
14. Cognitive null steering in frequency diverse array radars.
- Author
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Saeed, Sarah, Qureshi, Ijaz Mansoor, Basit, Abdul, Salman, Ayesha, and Khan, Waseem
- Abstract
Null steering has been a challenge in radar communications for the past few decades. In this paper, a novel cognitive null steering technique in frequency diverse array radars using frequency offset selection is presented. The proposed system is a complete implementable framework that provides precise and deep null placement in the range and angle locations of the interference source. The proposed system is cognitive such that the transmitter and receiver are connected via a feedback loop. System extracts interference source location parameters from the radar scene using Multiple Signal Classification, a super resolution direction of arrival estimation technique. Neural networks known for minimum computation time, and good non-linear and non-parametric approximation have been utilized for prediction of next location of the interference source. Simulation results validate the proposed frequency offset selection by demonstrating precise and deep nulls at the desired locations. [ABSTRACT FROM PUBLISHER]
- Published
- 2017
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- View/download PDF
15. Bibliography.
- Author
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Pischella, Mylène and Le Ruyet, Didier
- Published
- 2015
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16. Evapotranspiration in Korea estimated by application of a neural network to satellite images.
- Author
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Yeom, Jong-Min, Lee, Chang-Suk, Park, Soo-Jae, Ryu, Jae-Hyun, Kim, Jae-Jin, Kim, Hyun-Cheol, and Han, Kyung-Soo
- Subjects
EVAPOTRANSPIRATION ,PLANT transpiration ,REMOTE-sensing images ,ARTIFICIAL neural networks ,EDDY flux - Abstract
Previous biophysical and empirical models of evapotranspiration retrieval are difficult to parameterize because of the effects of the nonlinear biophysics of plants, terrestrial and solar radiation and soils, despite attempts made using various satellite products. In this study, the multilayer feed-forward neural network approach with Levenberg–Marquardt back propagation (LM-BP) was used to successfully estimate evapotranspiration using the input of various satellite-based products. When applying neural network training, value-added satellite-based products such as normalized difference vegetation index (NDVI), normalized difference water index (NDWI), land surface temperature (LST), air temperature and insolation are used instead of only spectral information from satellite sensors to reflect the spatial representativeness of the neural network. The evapotranspiration estimated from the neural network with input parameters showed better statistical accuracy than the MODIS products (MOD16) and Priestley–Taylor methods when compared with ground station eddy flux measurements, which were considered as reference data. Additionally, the temporal variation in neural network evapotranspiration well reflected seasonal patterns of eddy flux evapotranspiration, especially for the high cloudiness in the summer season. [ABSTRACT FROM AUTHOR]
- Published
- 2015
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- View/download PDF
17. Finding the minimum input impedance of a secondorder twofold-gain Sallen-Key low-pass filter without calculus.
- Author
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Cartwright, Kenneth V. and Kaminsky, Edit J.
- Subjects
CALCULUS ,IMPEDANCE matrices ,LOWPASS electric filters - Abstract
Copyright of Latin-American Journal of Physics Education is the property of Latin-American Physics Education Network 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
- 2014
18. Author index.
- Published
- 2005
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19. Author index.
- Published
- 2005
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- View/download PDF
20. Author index.
- Published
- 2005
- Full Text
- View/download PDF
21. Author index.
- Published
- 2005
- Full Text
- View/download PDF
22. Author index.
- Published
- 2005
- Full Text
- View/download PDF
23. Author index.
- Published
- 2005
- Full Text
- View/download PDF
24. Conferences & Residencies.
- Author
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DAVIDSON, CAROLINE
- Subjects
AUTHORS' conferences ,CAREER development ,CONFERENCES & conventions - Abstract
The article offers information on several events to be held in the U.S. which includes the Fall 2016 BinderCon professional development conference, American Literary Translators Association Conference, and Chicago Writers Conference.
- Published
- 2016
25. Volcanic hot spot detection from optical multispectral remote sensing data using artificial neural networks.
- Author
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Piscini, Alessandro and Lombardo, Valerio
- Subjects
VOLCANOES ,MULTISPECTRAL imaging ,REMOTE sensing ,DATA analysis ,ARTIFICIAL neural networks - Abstract
This paper describes an application of artificial neural networks for the recognition of volcanic lava flow hot spots using remote sensing data. Satellite remote sensing is a very effective and safe way to monitor volcanic eruptions in order to safeguard the environment and the people affected by such natural hazards. Neural networks are an effective and well-established technique for the classification of satellite images. In addition, once well trained, they prove to be very fast in the application stage.In our study a back propagation neural network was used for the recognition of thermal anomalies affecting hot lava pixels. The network was trained using the three thermal channels of the Advanced Very High Resolution Radiometer (AVHRR) sensor as inputs and the corresponding values of heat flux, estimated using a two thermal component model, as reference outputs.As a case study the volcano Etna (Eastern Sicily, Italy) was chosen, and in particular the effusive eruption which took place during the month of 2006 July. The neural network was trained with a time-series of 15 images (12 nighttime images and 3 daytime images) and validated on three independent data sets of AVHRR images of the same eruption and on two relative to an eruption occurred the following month.While for both nighttime and daytime validation images the neural network identified the image pixels affected by hot lava with a 100 per cent success rate, for the daytime images also adjacent pixels were included, apparently not interested by lava flow. Despite these performance differences under different illumination conditions, the proposed method can be considered effective both in terms of classification accuracy and generalization capability. In particular our approach proved to be robust in the rejection of false positives, often corresponding to noisy or cloudy pixels, whose presence in multispectral images can often undermine the performance of traditional classification algorithms. Future work shall address application of the proposed method to data acquired with a high temporal resolution, such as those provided by the spinning enhanced visible and infrared imager sensor on board the Meteosat second generation geostationary satellite. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF
26. Finding the minimum input impedance of a second-order unity-gain Sallen-Key low-pass filter without calculus.
- Author
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Cartwright, Kenneth V. and Kaminsky, Edit J.
- Subjects
IMPEDANCE control ,LOWPASS electric filters ,CALCULUS ,QUALITY factor ,SIMULATION Program with Integrated Circuit Emphasis - Abstract
Copyright of Latin-American Journal of Physics Education is the property of Latin-American Physics Education Network 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
- 2013
27. High Throughput Wear Debris Detection in Lubricants Using a Resonance Frequency Division Multiplexed Sensor.
- Author
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Du, Li, Zhu, Xiaoliang, Han, Yu, and Zhe, Jiang
- Subjects
FATIGUE (Physiology) ,WASTE products ,LUBRICATION & lubricants ,MAGNETIC resonance ,FREQUENCY division multiple access ,METAL toxicology ,SIGNAL-to-noise ratio - Abstract
With a long time goal of detecting signs of potential machine failure, we demonstrate a proof-of-principle multiplexed, multichannel, inductive pulse sensor based on resonant frequency division multiplexing for high throughput detection of micro-scale metallic debris in lubricants. In the four-channel sensor, each sensing coil is connected to a specific external capacitance to form a parallel LC circuit that has a unique resonant frequency. Only one combined sinusoidal excitation signal consisting of four frequencies components that are close to the 4 sensing channels' resonant frequencies was applied to the sensor, and only one combined voltage response was measured. Because each sensing channel exhibited a peak amplitude at its resonant frequency, the signals for each individual channel were recovered from the combined response by taking the spectrum components at each resonant frequency with an improved signal-to-noise ratio. Inductance change for each channel was then calculated from signals of individual channels. Testing results show that the use of resonant frequency division multiplexing allows simultaneous detection of debris in lubricants using only one set of detection electronics; for the four-channel sensor, there is a 300 % increase in throughput. The resonant frequency division multiplexing concept can be potentially applied to a multichannel oil debris sensor with a large number of sensing channels to achieve a very high throughput, which is necessary for online health monitoring of rotating and reciprocal mechanical components. [ABSTRACT FROM AUTHOR]
- Published
- 2013
- Full Text
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28. Determining the maximum or minimum impedance of a special parallel RLC circuit without calculus.
- Author
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Cartwright, Kenneth V. and Kaminsky, Edit J.
- Subjects
CALCULUS ,ELECTRIC impedance ,RADIO frequency ,GRAPH theory ,MAXIMA & minima - Abstract
Copyright of Latin-American Journal of Physics Education is the property of Latin-American Physics Education Network 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
- 2012
29. Harshness in image classification accuracy assessment.
- Author
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Foody, GilesM.
- Subjects
REMOTE sensing ,AERIAL photogrammetry ,AEROSPACE telemetry ,DETECTORS ,FREE-space optical technology ,CLASSIFICATION ,IMAGE processing ,IMAGING systems ,AERIAL photography in geography - Abstract
Thematic mapping via a classification analysis is one of the most common applications of remote sensing. The accuracy of image classifications is, however, often viewed negatively. Here, it is suggested that the approach to the evaluation of image classification accuracy typically adopted in remote sensing may often be unfair, commonly being rather harsh and misleading. It is stressed that the widely used target accuracy of 85% can be inappropriate and that the approach to accuracy assessment adopted commonly in remote sensing is pessimistically biased. Moreover, the maps produced by other communities, which are often used unquestioningly, may have a low accuracy if evaluated from the standard perspective adopted in remote sensing. A greater awareness of the problems encountered in accuracy assessment may help ensure that perceptions of classification accuracy are realistic and reduce unfair criticism of thematic maps derived from remote sensing. [ABSTRACT FROM AUTHOR]
- Published
- 2008
- Full Text
- View/download PDF
30. The application of artificial neural networks to the analysis of remotely sensed data.
- Author
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Mas, J. F. and Flores, J. J.
- Subjects
ARTIFICIAL neural networks ,ARTIFICIAL intelligence ,REMOTE sensing ,DATA analysis ,DATA corruption ,ALGORITHMS ,COMPUTER software ,IMAGE analysis ,IMAGING systems - Abstract
Artificial neural networks (ANNs) have become a popular tool in the analysis of remotely sensed data. Although significant progress has been made in image classification based upon neural networks, a number of issues remain to be resolved. This paper reviews remotely sensed data analysis with neural networks. First, we present an overview of the main concepts underlying ANNs, including the main architectures and learning algorithms. Then, the main tasks that involve ANNs in remote sensing are described. The limitations and crucial issues relating to the application of the neural network approach are discussed. A brief review of the implementation of ANNs in some of the most popular image processing software packages is presented. Finally, we discuss the application perspectives of neural networks in remote sensing image analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2008
- Full Text
- View/download PDF
31. Using a hierarchical multi-resolution mechanism for the classification and semantic extraction of landuse maps for Beer-Sheva, Israel.
- Author
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Blumberg, D. G. and Zhu, G.
- Subjects
IMAGE processing ,IMAGING systems ,INFORMATION processing ,IMAGE analysis ,MAPS ,CARTOGRAPHIC materials ,CARTOGRAPHY ,IMAGE stabilization - Abstract
The spatial analysis of remotely sensed images evolves in three stages: physical classification, semantic extraction, and information recognition. The traditional approaches to image processing use only the first stage. In this paper, a hierarchical multi-resolution structure was developed by the use of segmentation to integrate the three stages into one common platform. Following a spatial segmentation, hierarchical multi-resolution layers were formed to handle the various information needs inherent in the various ground features identified within the image. The relationship between image objects in one layer, or several layers, characterized the segmental objects in spectral, spatial, and hierarchical perspectives, generating new additional layers of information for image analysis. Consequently when the classification was finished, the semantic hierarchy of the ground features and information hidden within the image pixels were extracted. Finally this classification is achieved through image processing by initially decomposing the image into the most basic physical objects and the recomposing into semantic objects. The superiority of the method is obvious: (i) semantic extraction and information recognition can be synthetically performed with the classification procedure in the image processing; (ii) the way that per-pixel handling is promoted to per-object analysis makes image processing more natural; and (iii) the mechanism analysing the relationship in a multi-resolution hierarchy yields a better understanding of the image objects, both semantically and physically. [ABSTRACT FROM AUTHOR]
- Published
- 2007
- Full Text
- View/download PDF
32. Artificial neural networks for mapping regional‐scale upland vegetation from high spatial resolution imagery.
- Author
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Mills, H., Cutler, M. E. J., and Fairbairn, D.
- Subjects
ARTIFICIAL neural networks ,UPLANDS ,VEGETATION & climate ,REMOTE sensing ,PERCEPTRONS - Abstract
Upland vegetation represents an important resource that requires frequent monitoring. However, the heterogeneous nature of upland vegetation and lack of ground data require classification techniques that have a high degree of generalization ability. This study investigates the use of artificial neural networks as a means of mapping upland vegetation from remotely sensed data. First, the optimum size of support to map upland vegetation was estimated as being less than 4 m, which suggested that soft classification techniques and high spatial resolution IKONOS imagery were required. The use of high spatial resolution imagery for regional‐scale areas has introduced new challenges to the remote sensing community, such as using limited ground data and mapping land‐cover dynamics and variation over large areas. This work then investigated the utility of artificial neural networks (ANN) for regional‐scale upland vegetation from IKONOS imagery using limited ground data and to map unseen data from remote geographical locations. A Multiple Layer Perceptron was trained with pixels from an IKONOS image using early stopping; however, despite high classification accuracies when calculated for pixels from an area where training pixels were extracted, the networks did not produce high accuracies when applied to unseen data from a remote area. [ABSTRACT FROM AUTHOR]
- Published
- 2006
- Full Text
- View/download PDF
33. Comparison of Neural Networks and Gravity Models in Trip Distribution.
- Author
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Tillema, Frans, van Zuilekom, Kasper M., and van Maarseveen, Martin F. A. M.
- Subjects
TRANSPORTATION ,ARTIFICIAL neural networks ,ARTIFICIAL intelligence ,MATHEMATICAL models ,OPERATIONS research - Abstract
Transportation engineers are commonly faced with the question of how to extract information from expensive and scarce field data. Modeling the distribution of trips between zones is complex and dependent on the quality and availability of field data. This research explores the performance of neural networks in trip distribution modeling and compares the results with commonly used doubly constrained gravity models. The approach differs from other research in several respects; the study is based on both synthetic data, varying in complexity, as well as real-world data. Furthermore, neural networks and gravity models are calibrated using different percentages of hold out data. Extensive statistical analyses are conducted to obtain necessary sample sizes for significant results. The results show that neural networks outperform gravity models when data are scarce in both synthesized as well as real-world cases. Sample size for statistically significant results is forty times lower for neural networks. [ABSTRACT FROM AUTHOR]
- Published
- 2006
- Full Text
- View/download PDF
34. Neural network application for cloud detection in SPOT VEGETATION images.
- Author
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Jang, Jae‐dong, Viau, AlainA., Anctil, François, and Bartholomé, Etienne
- Subjects
REMOTE-sensing images ,ARTIFICIAL neural networks ,CLOUDS ,CARTOGRAPHIC materials ,ARTIFICIAL intelligence - Abstract
SPOT VEGETATION is a recent sensor at 1 km resolution for land surface studies. Cloud detection based on this sensor is complicated by the absence of a thermal band. An artificial neural network was thus trained for the cloud detection on atmospherically corrected S1 daily data and on top of the atmosphere reflectance P data, from the SPOT VEGETATION system. It consists of a multi-layer perceptron with one hidden sigmoid layer, trained with the Levenberg-Marquardt back-propagation algorithm and generalized by the Bayesian regularization. Two neural networks allowed optimal cloud detections to be obtained. The first used all four bands of S1 data with 13 hidden nodes, and the second employed all four bands of P data with 11 hidden nodes. The multiple-layer perceptrons lead to a cloud detection accuracy of 98.0% and 97.6% for S1 and P data, respectively, when trained to map three predefined values that classify cloud, water and land. The network was further evaluated using three SPOT VEGETATION images taken at different rates. The network detected not only bright thick clouds but also thin or less bright clouds. The analysis demonstrated the superior classification of the network over the standard cloud masks provided with the data. [ABSTRACT FROM AUTHOR]
- Published
- 2006
- Full Text
- View/download PDF
35. A multilayer feedforward neural network for automatic classification of eucalyptus forests in airborne video imagery.
- Author
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Prost, C., Zerger, A., and Dare, P.
- Subjects
ARTIFICIAL neural networks ,COMPUTER architecture ,EUCALYPTUS ,PARKS ,PLANT diseases ,PLANT ecology - Abstract
Eucalypt tree dieback is a disease that threatens the survival of woodlands in Australian national parks. For mapping and monitoring the spatial distribution of dieback, airborne imaging technologies can be more effective than ground surveys. Amongst the numerous types of airborne sensors, the video camera provides images with very high spatial resolution. In order to detect individual defoliated Eucalyptus trees at Mt Eccles national park (south-western Victoria), aerial video data was acquired across the study site. Highlighting the health status of sparse and mainly unclustered defoliated eucalypts at Mt Eccles through video images was deemed to be achievable in several steps. This paper introduces a classification method based on a feedforward neural network, whose main goal is to perform a segmentation of the video frames into three classes, namely, bare branches or trunks, healthy canopy and understorey vegetation. The aim of the algorithm is to create a subset of the eucalypt tree group, including defoliated and dead trees, for further analysis. The results suggest that the recognition of trunks and systems of bare branches is feasible using the neural network architecture. This provides a means to pre-process the video data so as to analyse the health of trees and thus assist park managers with managing dieback. [ABSTRACT FROM AUTHOR]
- Published
- 2005
- Full Text
- View/download PDF
36. Neural network estimation of air temperatures from AVHRR data.
- Author
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Jang, J. -D., Viau, A. A., and Anctil, F.
- Subjects
ARTIFICIAL neural networks ,ATMOSPHERIC temperature ,ALTITUDES ,RADIOMETERS ,ZENITH distance - Abstract
Multilayer feed-forward (MLF) neural networks were employed to estimate air temperatures in Southern Québec (Canada) using Advanced Very High Resolution Radiometer (AVHRR) images. The input variables for the networks were the five bands of the AVHRR image, surface altitude, solar zenith angle, and Julian day. The estimation was carried out using a dataset collected during the growing season from June to September 2000. Levenberg--Marquardt back-propagation (LM-BP) was used to train the networks. The early stopping method was applied to improve the LM-BP and to generalize the networks. Bands 4 and 5, which are used for retrieval of surface temperature, were the most critical components for the estimation. The contribution of Julian day to the precision of estimated air temperature was much superior to that of altitude and solar zenith angle for the dataset of inter-seasonal air temperatures. The network using all five bands, Julian day, altitude, and solar zenith angle provided the best results, with 22 nodes in the hidden layer. In the time series of estimated and station air temperatures, the difference between the temperatures was generally maintained within 2°C on various canopies, even during steep variations in August and September. [ABSTRACT FROM AUTHOR]
- Published
- 2004
- Full Text
- View/download PDF
37. Comparison of maximum likelihood classification method with supervised artificial neural network algorithms for land use activities.
- Author
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Erbek, F. Sunar, Özkan, C., and Taberner, M.
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LAND use ,REMOTE sensing ,ARTIFICIAL neural networks ,ALGORITHMS ,PERCEPTRONS ,THEMATIC maps - Abstract
More than most European cities, Istanbul is experiencing considerable pressure from urban development due to a rapidly increasing population. As a consequence the land use activities in urban and suburban areas are changing dramatically. To provide cost-effective information about the current state and how it is changing in order to develop integrated policies, multi-temporal remotely sensed data, with its synoptic and regular coverage, is being used. Nevertheless, the mapping and monitoring of urban change through remote sensing is difficult owing to the complex urban land use patterns. Although many image processing techniques have been developed for this purpose, they are complicated by differences amongst images caused by differences in the effects of the atmosphere, illumination, and surface moisture. One technique which is relatively unaffected by these problems is based on artificial neural network (ANN) classification algorithms. The main objective of this study was to examine the performance of two ANN classifiers for land use classification using Landsat TM data. Two different supervised ANN approaches were used: the multi layer perceptron (MLP) and the learning vector quantization (LVQ). The performance of these classifiers was compared to the more conventional maximum likelihood approach. [ABSTRACT FROM AUTHOR]
- Published
- 2004
- Full Text
- View/download PDF
38. Neural Network-Based Estimation of Principal Metal Contents in the Hokuroku District, Northern Japan, for Exploring Kuroko-Type Deposits.
- Author
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Koike, Katsuaki, Matsuda, Setsuro, Suzuki, Toru, and Ohmi, Michito
- Subjects
MINERAL industries ,ORE deposits ,MINES & mineral resources ,VOLCANIC ash, tuff, etc. ,MIOCENE stratigraphic geology ,ZINC ,COPPER ,LEAD - Abstract
Focuses on the Hokuroku district in northern Japan, which is known to be dominated by kuroko-type massive sulfide deposits that have a genetic relation to submarine volcanic activity. How the deposits are hosted in a specific stratigraphic zone of Miocene volcanic rocks; Estimates of copper, lead, and zinc contents over the study area; How the content models are considered to be valid because high-content zones are located on the known mine sites and the margins of ancient volcanoes or calderas.
- Published
- 2002
- Full Text
- View/download PDF
39. Comparison of the bleeding on marginal probing index and the Eastman interdental bleeding index as indicators of gingivitis.
- Author
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Barendregt, D. S, Timmerman, M. F, van der Velden, U, and van der Weijden, G. A
- Subjects
MEDICAL screening ,GINGIVITIS - Abstract
Abstract Aim: The purpose of the present study was to compare 2 indices, i.e., the Eastman interdental bleeding (EIB) index and the bleeding on marginal probing (BOMP) index. The comparison was made (a) in terms of the degree of bleeding provoked and the relationship with plaque in natural gingivitis and (b) for the ability of these 2 methods to detect differences between the development of experimental gingivitis in a control group and a group in which the development of gingival inflammation was suppressed by treatment. For the present studies, subjects were selected without interdental recession of the gingival tissues. Methods experiment 1: In this experiment, 43 subjects having established moderate gingivitis were assessed using a random splitmouth design (1st and 3rd/2nd and 4th quadrant). Plaque was scored on all approximal sites after which the BOMP index was assessed in one half of the mouth and the EIB index in the other. Results experiment 1: The BOMP index showed a bleeding score of 84% and the EIB index of 87%. The significant correlation between plaque and gingival bleeding for the BOMP index (0.55) was higher than for the EIB index (0.44). Methods experiment 2: For this experiment, 25 subjects participated in an experimental gingivitis trial of the lower jaw. At baseline, first the BOMP index and immediately thereafter the EIB index were assessed at all approximal sites. Experimental gingivitis (EG) was carried out in one randomly assigned quadrant and as a treatment modality only floss was used in the other (FL). Results experiment 2: In the EG quadrant, the BOMP index increased to 69% and the EIB index to 73%. Both indices showed a significant correlation with plaque; 0.60 and 0.64 respectively. In the FL quadrant, the BOMP index increased to 38% and the EIB index to 30%. No significant correlation between both gingivitis indices and the amount of plaque was present in the FL quadrant. Conclusion: The ability of the BOMP index and the EIB index... [ABSTRACT FROM AUTHOR]
- Published
- 2002
- Full Text
- View/download PDF
40. Artificial Neural Networks in Remote Sensing of Hydrologic Processes.
- Author
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Islam, Shafiqul and Kothari, Ravi
- Subjects
HYDROLOGY ,REMOTE sensing ,ARTIFICIAL neural networks - Abstract
Recent progress in remote sensing technologies, coupled with ongoing and planned remote sensing missions, is expected to generate hydrologic data at spatial, temporal, and spectral resolutions never previously available. Artificial neural networks (ANNs), although at early stages of hydrologic applications, are rapidly becoming an attractive tool to characterize, model, and predict complex multisource remotely sensed hydrologic data. We review and examine the utility of ANNs for hydrologic applications, with particular emphasis on remote sensing of precipitation, soil moisture, and multisource land surface data. In addition to more popularly used multilayer feedforward networks, we also review recurrent neural networks for prediction and self-organization neural networks for spatial characterization of heterogeneous land surface processes. [ABSTRACT FROM AUTHOR]
- Published
- 2000
- Full Text
- View/download PDF
41. Predictive modelling of coniferous forest age using statistical and artificial neural network approaches applied to remote sensor data.
- Author
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Jensen, J. R., Qiu, Fang, and Ji, Minhe
- Subjects
ARTIFICIAL neural networks ,LOBLOLLY pine ,AGE - Abstract
Age is a powerful variable that can be of significant value when modelling the health of forest-dominated ecosystem. Traditional investigations have attempted to extract age information from remotely sensed data by regressing the spectral values with in situ derived age data. Traditional statistical approaches assume (a) normally distributed remote sensing and in situ data, (b) no collinearity among variables, and (c) linear data relationships. Artificial neural networks (ANNs) are not bound by such assumptions and may yield improved predictive modelling of forest stand biophysical parameters if properly utilized. This study investigated traditional statistical and ANN approaches to perform the predictive modelling of the age of loblolly pine (Pinus taeda) for large stands in southern Brazil using Thematic Mapper (TM) data. An extensive comparison of pattern associator and back-propagation ANNs versus both linear and nonlinear regression analysis was conducted. Various neural network architectures were investigated to determine the optimal configuration for this particular dataset. Certain back-propagation ANNs modelled stand age significantly better than traditional statistical approaches because of their ability to take into account nonlinear, nonnormally distributed data. The results suggest that ANN analysis may be of significant value when using remote sensing data to model certain forest variables. [ABSTRACT FROM AUTHOR]
- Published
- 1999
- Full Text
- View/download PDF
42. Gingival IgE and histamine concentrations in patients with asthma and in patients with periodontitis.
- Author
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Hyyppä, Tuula
- Subjects
IMMUNOGLOBULIN E ,GINGIVAL diseases ,HISTAMINE ,ASTHMA ,SALIVA ,MAST cells ,PERIODONTITIS - Abstract
Copyright of Journal of Clinical Periodontology is the property of Wiley-Blackwell 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
- 1984
- Full Text
- View/download PDF
43. Introduction Neural networks in remote sensing.
- Author
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Atkinson, P. M. and Tatnall, A. R. L.
- Published
- 1997
- Full Text
- View/download PDF
44. Breaker page.
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- 2005
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45. Breaker page.
- Published
- 2005
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46. Breaker page.
- Published
- 2005
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47. Breaker page.
- Published
- 2005
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48. Breaker page.
- Published
- 2005
- Full Text
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49. Secondary-Ion Collection System for an Ion Microprobe Analyzer of High Mass Resolution.
- Author
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Krohn, V. E. and Ringo, G. R.
- Published
- 1972
- Full Text
- View/download PDF
50. Seafloor characterization using texture.
- Author
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Subramaniam, S., Barad, H., Martinez, A.B., and Bourgeois, B.
- Published
- 1993
- Full Text
- View/download PDF
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