Tongxin xuebao (Nov 2020)

Application of bilateral fusion model based on CNN in hyperspectral image classification

  • Hongmin GAO,
  • Xueying CAO,
  • Yao YANG,
  • Zaijun HUA,
  • Chenming LI

Journal volume & issue
Vol. 41
pp. 132 – 140

Abstract

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Aiming at the issues of decreasing spatial resolution and feature loss caused by pooling operation in depth CNN-based hyperspectral image classification algorithm,a bilateral fusion block network (DFBN)composed of bilateral fusion blocks was designed.The upper structure of bilateral fusion block was constituted by 1×1 convolution and hyperlink,which was used to transfer local spatial characteristics.The lower structure was constituted by pooling layer,convolutional layer,deconvolution layer and upsampling to enhance the characteristics of efficient discrimination.Experimental results on three benchmark hyperspectral image data sets illustrate that the model is superior to other similar classification models.

Keywords