期刊名称: |
Soft Computing |
全部作者: |
Sen Jia,Yao Xie,Guihua Tang,Jiasong Zhu |
出版年份: |
2016 |
卷 号: |
20 |
期 号: |
12 |
页 码: |
4659-4668 |
查看全本: |
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Recently, sparse representation-based classification
(SRC), which assigns a test sample to the class with
minimum representation error via a sparse linear combination
of all the training samples, has successfully been applied
to hyperspectral imagery. Alternatively, spatial information,
which means the adjacent pixels belong to the same class with
a high probability, is a valuable complement to the spectral
information. In this paper, we have presented a new spectralspatial-combined
SRC method, abbreviated as SSSRC or
S3RC, to jointly consider the spectral and spatial neighborhood
information of each pixel to explore the spectral and
spatial coherence by the SRC method. Furthermore, a fast
interference-cancelation operation is adopted to accelerate
the classification procedure of S3RC, named FS3RC. Experimental
results have shown that both the proposed SRC-based
approaches, S3RC and FS3RC, could achieve better performance
than the other state-of-the-art methods.