Structured priors for sparse-representation-based hyperspectral image classification

X Sun, Q Qu, NM Nasrabadi… - IEEE geoscience and …, 2013 - ieeexplore.ieee.org
IEEE geoscience and remote sensing letters, 2013ieeexplore.ieee.org
Pixelwise classification, where each pixel is assigned to a predefined class, is one of the
most important procedures in hyperspectral image (HSI) analysis. By representing a test
pixel as a linear combination of a small subset of labeled pixels, a sparse representation
classifier (SRC) gives rather plausible results compared with that of traditional classifiers
such as the support vector machine. Recently, by incorporating additional structured sparsity
priors, the second-generation SRCs have appeared in the literature and are reported to …
Pixelwise classification, where each pixel is assigned to a predefined class, is one of the most important procedures in hyperspectral image (HSI) analysis. By representing a test pixel as a linear combination of a small subset of labeled pixels, a sparse representation classifier (SRC) gives rather plausible results compared with that of traditional classifiers such as the support vector machine. Recently, by incorporating additional structured sparsity priors, the second-generation SRCs have appeared in the literature and are reported to further improve the performance of HSI. These priors are based on exploiting the spatial dependences between the neighboring pixels, the inherent structure of the dictionary, or both. In this letter, we review and compare several structured priors for sparse-representation-based HSI classification. We also propose a new structured prior called the low-rank (LR) group prior, which can be considered as a modification of the LR prior. Furthermore, we will investigate how different structured priors improve the result for the HSI classification.
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