Masud Ibn AfjalMd. Nazrul Islam MondalMd. Al Mamun
We present an innovative hyperspectral image (HSI) classification method addressing challenges posed by closely spaced wavelength bands. Our approach combines 3D-2D convolutional neural networks (CNNs) with multi-branch feature fusion for improved spectral-spatial feature extraction. Using segmented principal component analysis (Seg-PCA), we reduce HSIs' spectral dimensions into global and local intrinsic characteristics. The integration of 3D and 2D CNNs captures joint spectral-spatial features, while a multi-branch network extracts and merges diverse local features along the spectral dimension. Our method outperforms existing approaches, achieving remarkable accuracy of 99.27%, 100%, and 99.99% on Indian Pines, Salinas Scene, and University of Pavia datasets, respectively.
Zixian GeGuo CaoXuesong LiPeng Fu
Hongmin GaoYiyan ZhangYunfei ZhangZhonghao ChenChenming LiHui Zhou
Tanver AhmedAdiba Mahjabin NituMasud Ibn AfjalMd. Abdulla Al MamunMd Palash Uddin
Chen LiYi WangZhice FangPenglei Li