计算机科学 ›› 2014, Vol. 41 ›› Issue (Z6): 230-233.

• 模式识别与图像处理 • 上一篇    下一篇

半监督邻域保持嵌入在高光谱影像分类中的应用

冯海亮,潘竞文,黄鸿   

  1. 重庆大学光电技术及系统教育部重点实验室 重庆400044;重庆大学光电技术及系统教育部重点实验室 重庆400044;重庆大学光电技术及系统教育部重点实验室 重庆400044
  • 出版日期:2018-11-14 发布日期:2018-11-14
  • 基金资助:
    本文受国家自然科学基金(61101168,8),重庆市基础与前沿研究计划项目(cstc2013jcyjA40005)资助

Hyperspectral Image Classification Based on Semi-supervised Neighborhood Preserving Embedding

FENG Hai-liang,PAN Jing-wen and HUANG Hong   

  • Online:2018-11-14 Published:2018-11-14

摘要: 为了解决高光谱遥感影像的维数约简问题以提高分类算法的分类精度,并针对高光谱影像通常只包含少量标记样本的问题,提出了基于一种半监督邻域保持嵌入(SSNPE)和改进的KNN分类器的高光谱影像分类算法。该算法在NPE的基础上同时利用同类标记样本和邻域未标记样本获得数据的邻域嵌入结构,并且通过增加标记近邻样本的权重加大降维数据的鉴别性,进而增加k近邻分类器的样本分类精度。在Urban、Indian高光谱影像数据集上的实验结果表明,改进的算法的分类精度提高了约8.7%、3.6%以上,分类性能有了较明显的改善。

关键词: 高光谱影像分类,维数约简,邻域保持嵌入,半监督学习 中图法分类号TP751.1,TP391.4文献标识码A

Abstract: In order to solve the dimension reduction problem of hyperspectral image to improve the classification algorithm’s classification accuracy rate and the problem that hyperspectral image usually contains little labeled samples,we proposed a hyperspectral image algorithm based on a semi-supervised neighborhood preserving embedding algorithm and improved k-Nearest Neighborhood classifier.This algorithm uses both the labeled samples and the unlabeled samples of the neighborhood based on Neighborhood Preserving Embedding to get the neighborhood embedding structure,and improve the classification feature through raising weight of the labeled neighboring samples,and thus improving the sample accuracy rate of KNN classifier.The experimental results on the Urban and Indian Pine data sets show that the accuracy rate of the proposed method is improved by more than about 8.7%,3.6%,respectively,and thus the classification performance has been improved clearly.

Key words: Hyperspectral image classification,Dimension reduction,Neighborhood preserving embedding,Semi-supervised learning

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