access icon free Polarimetric-basis transformation for land classification in PolInSAR

Based on the polarimetric-basis transformation principle, a method for utilisation of the scattering mechanism vectors for land classification is proposed. The experimental results show that both the amplitude and the phase components of the vectors can be used for land classification. By implementing different linear transformation processes of the scattering matrix, a variety of areas can be extracted separately.

Inspec keywords: radar polarimetry; geophysical image processing; radar interferometry; image classification; geophysical techniques; synthetic aperture radar; remote sensing by radar; electromagnetic wave scattering

Other keywords: PolInSAR; linear transformation processes; polarimetric-basis transformation principle; vector phase components; scattering matrix; polarimetric-basis transformation; land classification; scattering mechanism vectors

Subjects: Optical, image and video signal processing; Data and information; acquisition, processing, storage and dissemination in geophysics; Instrumentation and techniques for geophysical, hydrospheric and lower atmosphere research; Radar equipment, systems and applications; Computer vision and image processing techniques; Geography and cartography computing; Geophysical techniques and equipment

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http://iet.metastore.ingenta.com/content/journals/10.1049/el.2012.3376
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