Remote Sensing Image Segmentation By Combining Spectral.pdf ...
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Remote Sensing Image Segmentation By Combining Spectral.pdf ...
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Remote Sensing Image Segmentation By Combining Spectral And Texture Features We present a new method for remote sensing image segmentation, which utilizes both spectral and texture information. Linear filters are used to provide enhanced spatial patterns. For each pixel location, we compute combined spectral and texture features using local spectral histograms, which concatenate local histograms of all input bands. We regard each feature as a linear combination of several representative features, each of which corresponds to a segment. Segmentation is given by estimating combination weights, which indicate segment ownership of pixels. We present segmentation solutions where representative features are either known or unknown. We also show that feature dimensions can be greatly reduced via subspace projection. The scale issue is investigated, and an algorithm is presented to automatically select proper scales, which does not require segmentation at multiplescale levels. Experimental results demonstrate the promise of the proposed method.