下载此文档

融合栈式自编码与CNN的高光谱影像作物分类方法.pdf


文档分类:通信/电子 | 页数:约8页 举报非法文档有奖
1/8
下载提示
  • 1.该资料是网友上传的,本站提供全文预览,预览什么样,下载就什么样。
  • 2.下载该文档所得收入归上传者、原创者。
  • 3.下载的文档,不会出现我们的网址水印。
1/8 下载此文档
文档列表 文档介绍
2 0 2 1年12月 农业机械学报 第 52 卷 第 12 期
doi: data, traditional methods usually adopt the strategy of u feature reduction first, and then
classification冶. Starting from the data dimensionality reduction of the autoencoder and the classification
advantages of CNN network, the commonalities of the two networks in the training process was firstly
analyzed, and a fusion network for hyperspectral image classification was constructed based on the
selection of classifiers in the optimization process of the autoencoder. Compared with the traditional
methods , this method can realize the direct classification of hyperspectral images through once supervision
training, which simplified the traditional data processing process and had better classification
performances. In the experiment , two sets of typical hyperspectral remote sensing image data sets from
Pavia University and Xiong"an area were used to verify the method. The experimental results showed that
in Pavia University dataset, when only 10% of pixels were selected as the training set, the overall
classification accuracy of the proposed method reached 98. 73% , which was more than 8 percentage
points higher than those of the traditional method. In Xiong"an dataset, when only 1

融合栈式自编码与CNN的高光谱影像作物分类方法 来自淘豆网m.daumloan.com转载请标明出处.

相关文档 更多>>
非法内容举报中心
文档信息
  • 页数8
  • 收藏数0 收藏
  • 顶次数0
  • 上传人dt83088549
  • 文件大小1.90 MB
  • 时间2022-05-29