首页> 外文会议>SPIE Conference on Image and Signal Processing for Remote Sensing >Application of unsupervised nearest-neighbor density-based approaches to sequential dimensionality reduction and clustering of hyperspectral images
【24h】

Application of unsupervised nearest-neighbor density-based approaches to sequential dimensionality reduction and clustering of hyperspectral images

机译:无监督的最近​​邻密度的应用方法在旋转谱图像中的顺维程度下降和聚类

获取原文

摘要

In this communication, we address the problem of unsupervised dimensionality reduction (DR) for hyperspectral images (HSIs), using nearest-neighbor density-based (NN-DB) approaches. Dimensionality reduction is an important tool in the HSI processing chain, aimed at reducing the high redundancy among the HSI spectral bands, while preserving the maximum amount of relevant information for further processing. Basically, the idea is to formalize DR as the process of partitioning the spectral bands into coherent band sets. Two DR schemes can be set up directly, one based on band selection, and the other one based on band averaging. Another scheme is proposed here, based on compact band averaging. Experiments are conducted with hyperspectral images composed of an AISA Eagle HSI issued from our acquisition platform, and the AVIRIS Salinas HSI. We evaluate the efficiency of the reduced HSIs for final classification results under the three schemes, and compare them to the classification results without reduction. We show that despite a high dimensionality reduction (<8% of the bands left), the clustering results provided by NN-DB methods remain comparable to the ones obtained without DR, especially for GWENN in the band averaging case. We also compare the classification results obtained after applying other unsupervised or semi-supervised DR schemes, based either on band selection or band averaging, and show the superiority of the proposed DR scheme.
机译:在这种通信中,我们解决了使用最近邻的密度的(NN-DB)方法的超光图像(HSIS)的无监督维度减少(DR)的问题。减少维度是HSI处理链中的重要工具,旨在减少HSI光谱带中的高冗余,同时保留用于进一步处理的最大相关信息量。基本上,该想法是将DR正式地将光谱带分成相干频带集的过程。可以直接设置两个DR方案,基于频带选择,以及基于频段平均的另一个。这里提出了另一种方案,基于紧凑频带平均。实验是用由我们的收购平台发布的AISA Eagle HSI和Aviris Salinas HSI组成的高光谱图像进行。我们根据三个方案评估了最终分类结果的减少的HSI的效率,并将它们与分类结果进行比较而不减少。我们表明,尽管减少了高维度(剩余条带的<8%),但是由NN-DB方法提供的聚类结果仍然与没有DR获得的聚类结果,特别是对于带平均案例中的GWenn。我们还比较在频带选择或频段平均施加其他无监督或半监控的DR方案后获得的分类结果,并显示了所提出的DR方案的优越性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号