Semi-supervised classification of terrain features in polarimetric SAR images using H/A/α and the general four-component scattering power decompositions

Pacific Grove, CA(2014)

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摘要
In an effort to enhance image classification of terrain features in fully polarimetric SAR images, this paper explores the utility of combining the results of two state-of-the-art decompositions along with a semi-supervised classification algorithm to classify each pixel in an image. Each pixel is labeled either with a pre-determined classification label, or labeled as unknown.
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关键词
feature extraction,geophysical image processing,image classification,image enhancement,radar imaging,radar polarimetry,synthetic aperture radar,terrain mapping,general four-component scattering power decomposition,image enhancement,pixel classifcation,polarimetric SAR image,terrain feature semisupervised image classification
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