Hong LiZhijing YeGuangrun Xiao
This paper proposes a framework for hyperspectral images (HSIs) classification with composite kernels discriminant analysis (CKDA). The CKDA uses the spectral and spatial information extracted by Gaussian weighted local mean operator (GWLM) and is suitable to solve few labeled samples classification problem of HSI, which has very important practical significance for the case that training samples are insufficient due to high cost. Experimental results show that the spatial information extracted by GWLM can greatly improve the performance, and demonstrate the superiority of CKDA for HSI classification in the case of few labeled samples. Compared with other state-of-the-art spectral-spatial kernel methods, the proposed methods also show very good advantages, especially the parallel kernel method.
侯榜焕 HOU Bang-huan姚敏立 YAO Min-li贾维敏 JIA Wei-min张峰干 ZHANG Feng-gan王道平 WANG Dao-ping
Haoliang YuanYang LuLina YangHuiwu LuoYuan Yan Tang
Cheng‐Hsuan LiHui-Shan ChuBor‐Chen KuoChin‐Teng Lin
HOU BanghuanKun WangMinli YaoWeimin JiaRong Wang
Haoliang YuanYuan Yan TangYang LuLina YangHuiwu Luo