Attention networks enable neural networks to focus on the most beneficial parts of their input. In the context of remote sensing image classification, studies about spatial, spectral and spatial-spectral attention networks have already been reported. In this paper, a network integrating a scale-based attention module, in addition to spatial-spectral attention is proposed. The scale-space has been produced via alpha-trees, in order for the network to focus on the most useful scales. It is tested with two real hyperspectral datasets, where it achieves a performance improvement.
Qinggang WuMengkun HeZhongchi LiuYanyan Liu
Hao SunXiangtao ZhengXiaoqiang LuSiyuan Wu
Minghao ZhuLicheng JiaoFang LiuShuyuan YangJianing Wang
Kai YangHao SunChunbo ZouXiaoqiang Lu