Qi Bin, Zhao Chunhui, Yin Guisheng
Appl Opt. 2015 Feb 1;54(4):707-16. doi: 10.1364/AO.54.000707.
Sparse representation-based classification (SRC) has attracted increasing attention in remote-sensed hyperspectral communities for its competitive performance with available classification algorithms. Kernel sparse representation-based classification (KSRC) is a nonlinear extension of SRC, which makes pixels from different classes linearly separable. However, KSRC only considers projecting data from original space into feature space with a predefined parameter, without integrating a priori domain knowledge, such as the contribution from different spectral features. In this study, customizing kernel sparse representation-based classification (CKSRC) is proposed by incorporating kth nearest neighbor density as a weighting scheme in traditional kernels. Analyses were conducted on two publicly available data sets. In comparison with other classification algorithms, the proposed CKSRC further increases the overall classification accuracy and presents robust classification results with different selections of training samples.
基于稀疏表示的分类(SRC)因其与现有分类算法相比具有竞争力的性能,在遥感高光谱领域受到越来越多的关注。基于核稀疏表示的分类(KSRC)是SRC的非线性扩展,它使来自不同类别的像素线性可分。然而,KSRC仅考虑使用预定义参数将数据从原始空间投影到特征空间,而没有整合先验领域知识,例如来自不同光谱特征的贡献。在本研究中,通过将第k近邻密度作为加权方案纳入传统核中,提出了定制核稀疏表示分类(CKSRC)。对两个公开可用的数据集进行了分析。与其他分类算法相比,所提出的CKSRC进一步提高了总体分类精度,并在不同训练样本选择下呈现出稳健的分类结果。