Publication | Closed Access
Classification of multifrequency polarimetric SAR imagery using a dynamic learning neural network
162
Citations
10
References
1996
Year
RadarMultipolarization ImagesPrecision AgricultureImage AnalysisEngineeringSynthetic Aperture RadarPattern RecognitionMicrowave Remote SensingGeographyRemote SensingImaging RadarP-band Multipolarization ImagesRadar ApplicationRadar Signal ProcessingRadar Image ProcessingSatellite ImagingLand Cover MapSingle-polarization Images
A practical method for extracting microwave backscatter for terrain-cover classification is presented. The test data are multifrequency (P, L, C bands) polarimetric SAR data acquired by JPL over an agricultural area called "Flevoland". The terrain covers include forest, water, bare soil, grass, and eight other types of crops. The radar response of crop types to frequency and polarization states were analyzed for classification based on three configurations: 1) multifrequency and single-polarization images; 2) single-frequency and multipolarization images; and 3) multifrequency and multipolarization images. A recently developed dynamic learning neural network was adopted as the classifier. Results show that using partial information, P-band multipolarization images and multiband hh polarization images have better classification accuracy, while with a full configuration, namely, multiband and multipolarization, gives the best discrimination capability. The overall accuracy using the proposed method can be as high as 95% with a total of thirteen cover types classified. Further reduction of the data volume by means of correlation analysis was conducted to single out the minimum data channels required. It was found that this method efficiently reduces the data volume while retaining highly acceptable classification accuracy.
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