光子学报, 2016, 45 (3): 0330001, 网络出版: 2016-04-01   

基于半监督稀疏多流形嵌入的高光谱影像分类

Classification of Hyperspectral Images Based on Semi-supervised Sparse Multi-manifold Embedding
作者单位
重庆大学 光电技术及系统教育部重点实验室,重庆 400044
摘要
提出了一种半监督稀疏多流形嵌入方法,并应用于高光谱影像分类.该方法充分利用少量标记和大量无标记样本,采用稀疏表示方法得到样本的稀疏系数,并选取来自同一流形的点作为近邻点,然后构建相似图来表征多流形结构,得到样本在每个流形上低维鉴别特征,增加来自同一流形的数据点聚集性,进而提升分类性能.本文方法在PaviaU和Salinas两个高光谱数据集上的总体分类准确度分别达到84.91%和89.74%,相较于其他方法明显提高了地物分类性能.
Abstract
In this paper, a semi-supervised learning method called semi-supervised sparse multi-manifold embedding (S3MME) was proposed for the classification of hyperspectral image. S3 MME exploits both labeled and unlabeled samples to adaptively find neighbors of each sample from the same manifold by using an optimization program based on sparse representation, which constructs an appropriate graph to characterize the manifold structure. Then it tries to extract discriminative features on each manifold in low dimensional space such that the data points in the same manifold become closer. The overall classification accuracies of the proposed method can reach 84.91% and 89.74% on PaviaU and Salinas hyperspectral data sets respectively, which significantly improves the classification of land cover compared with the conventional methods.

黄鸿, 杨娅琼, 罗甫林. 基于半监督稀疏多流形嵌入的高光谱影像分类[J]. 光子学报, 2016, 45(3): 0330001. HONG Hong, YANG Ya-qiong, LUO Fu-lin. Classification of Hyperspectral Images Based on Semi-supervised Sparse Multi-manifold Embedding[J]. ACTA PHOTONICA SINICA, 2016, 45(3): 0330001.

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