Bing TuChengle ZhouXiaolong LiaoGuoyun ZhangYishu Peng
This letter introduces a novel spatial-spectral classification method for hyperspectral images (HSIs) based on a structural-kernel collaborative representation (SKCR), which considers one weak assumption of spatial neighborhood that of the pixels in a superpixel belong to the same class when exploiting contextual information in HSI. The proposed method consists of the following steps. First, a superpixel segmentation strategy is used to construct self-adaptive regions for the HSI. Then, the structural information within each superpixel block is extracted based on the density peak and K nearest neighbors. Next, dual kernels are separately utilized for the exploitation of the spectral and the spatial information. Finally, the dual kernels are combined and incorporated into a support-vector-machine classifier. Since the weak assumption of spatial neighborhood is well considered in the collaborative representation, the proposed method showed excellent classification performance for two widely used real hyperspectral data sets even when the number of training samples was relatively small.
Jianjun LiuZebin WuJun LiAntonio PlazaYunhao Yuan
Jianjun LiuZebin WuZhihui WeiLiang XiaoLe Sun
Guifeng ZhengXuanrui XiongYing LiJuan XiTengfei LiAmr Tolba
Rongchao YangQingbo ZhouBeilei FanYuting WangZhemin Li
Jianjun LiuZhiyong XiaoYufeng ChenJinlong Yang