Title of article :
Critical analysis of classification techniques for polarimetric synthetic aperture radar data
Author/Authors :
Mittal, Vikas Electronics and Communication Engg. Dep t. - National Institute of Technology Kurukshetra - Kurukshet ra, India , Singh, Dharmendra Electronics and Communication Engg. Dep t. - Indian Institute of Technology Roorkee - Roorkee, India , Saini , Lalit Mohan Electrical Engg.Dept . - National Institute of Technology Kurukshetra - Kurukshetra, India
Pages :
11
From page :
7
To page :
17
Abstract :
Full polarimetry SAR data known as PolSAR contains information in terms of microwave energy backscattered through different scattering mechanisms (surface-, double- and volume-scattering) by the targets on the surface of land. These scattering mechanisms information is different in different features. Similarly, different classifiers have different capabilities as far as identification of the targets corresponding to these scattering mechanisms. Extraction of different features and the role of classifier are important for the purpose of identifying which feature is the most suitable with which classifier for land cover classification. Selection of suitable features and their combinations have always been an active area of research for the development of advanced classification algorithms. Fully polarimetric data has its own advantages because its different channels give special scattering feature for various land cover. Therefore, first hand statistics HH, HV and VV of PolSAR data along with their ratios and linear combinations should be investigated for exploring their importance vis-à-vis relevant classifier for land management at the global scale. It has been observed that individually first hand statistics yield low accuracies. an‎d their ratios are also not improving the results either. However, improved accuracies are achieved when these natural features are stacked together.
Keywords :
Feature extraction and selection , Supervised and unsupervised classification , Scattering mechanisms , Backscattering coefficients , Land cover classification , PolSAR features
Journal title :
International Journal of Advances in Intelligent Informatics
Serial Year :
2016
Full Text URL :
Record number :
2601969
Link To Document :
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