In hyerspectral remote sensing community, sparse representation based classification (SRC) is a novel concept - a testing pixel is linearly represented by labeled data, and weight coefficients are often solved by an ℓ 1 -norm minimization. In this work, an extension of SRC is proposed by imposing an adaptive similarity measurement between the testing pixel and labeled data on the ℓ 1 -norm penalty, named as adaptive SRC (ASRC). ASRC generates more discriminative sparse codes which can represent the testing pixel more robustly. Experimental results demonstrate that the proposed ASRC outperforms the traditional SRC-based classification.
Amos BortiewSwarnajyoti PatraLorenzo Bruzzone
Jiangtao PengXue JiangNa ChenHuijing Fu
Wei FuShutao LiLeyuan FangXudong KangJón Atli Benediktsson
Leyuan FangShutao LiXudong KangJón Atli Benediktsson