An optimal selection of probability distribution functions for unsupervised land cover classification of PALSAR-2 data |
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Authors: | Ankita Jain Dharmendra Singh |
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Institution: | Department of Electronics and Communication Engineering, Indian Institute of Technology Roorkee, Roorkee-247667, India |
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Abstract: | Different types of classification techniques are available in the literature for the classification of Synthetic Aperture Radar (SAR) data into various land cover classes. Various SAR images are available for land cover classification such as ALOS PALSAR (PALSAR-1, PALSAR-2), RADARSAT and ENVISAT. In this paper, we have attempted to explore probability distribution function (pdf) based land cover classification using PALSAR-2 data. Over 20 different statistical distribution functions are analyzed for different classes based on statistical parameters. Probability distribution functions are selected based on Chi-squared goodness of fit test for each individual class. A decision tree based classifier is developed for classification based on the selected pdf functions and its statistical parameters. The proposed classification approach has an accuracy of 83.93%. |
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Keywords: | Classification PALSAR-2 data Probability distribution function (pdf) Synthetic Aperture Radar (SAR) |
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