Abstract:Hyperspectral image(HSI) data used for training in deep learning are insufficient, and therefore deeper network is unfavorable for spectral-spatial feature extraction. To solve this problem, a 3D multi-scale feature fusion residual network is proposed. Spectral-spatial features are learned by deep learning and multi-scale feature fusion. Firstly, the dimension of 3D-HSI data is adaptively reduced, and the images after dimensionality reduction are used as the input of the network. Secondly, spectral-spatial features are extracted successively through multi-scale feature fusion residual blocks and features of different scales are fused. The information flow is enhanced through sharing features and richer features are obtained. Finally, the network is trained end-to-end and tested on corresponding datasets. Experimental results show the satisfactory classification performance of the proposed network.
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