In hyperspectral image (HSI) classification task, effectively deriving and incorporating spatial information into spectral features is one of a key focus as it can largely influence the performance. Markov random fields (MRFs) are generative and flexible image texture models, and capable of effectively extracting spatial neighbourhood information along multiple spectral wavebands in an unsupervised way. Its parameter estimation process also shares strong compatibility with deep architecture, especially the convolutional neural networks. In this work, we propose an MRF based spectral-spatial fusion network (SSFNet) for HSI classification. Spatial features are extracted using MRF models and further fused with spectral information. Then the proposed SSFNet takes the fused features as input and produces reliable classification results. Comprehensive experiments conducted on the Indian pines and the Pavia university datasets are reported to verify the proposed method.
Yaqiu ZhangQuanhua ZhaoYu LiXueliang Gong
Xianghai CaoXiaozhen WangDa WangJing ZhaoLicheng Jiao
Chunbo ChengHong LiJiangtao PengWenjing CuiLiming Zhang
Le SunZebin WuJianjun LiuLiang XiaoZhihui Wei
Diling LiaoCuiping ShiLiguo Wang