重庆大学光电技术及系统教育部重点实验室,重庆,400044
网络出版:2020-06-25,
纸质出版:2020
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黄鸿, 王丽华, 石光耀. 面向高光谱遥感影像分类的监督多流形鉴别嵌入方法[J]. 电子学报, 2020,48(6):1099-1107.
HUANG Hong, WANG Li-hua, SHI Guang-yao. Supervised Multi-manifold Discriminant Embedding Method for Hyperspectral Remote Sensing Image Classification[J]. Acta Electronica Sinica, 2020, 48(6): 1099-1107.
黄鸿, 王丽华, 石光耀. 面向高光谱遥感影像分类的监督多流形鉴别嵌入方法[J]. 电子学报, 2020,48(6):1099-1107. DOI: 10.3969/j.issn.0372-2112.2020.06.008.
HUANG Hong, WANG Li-hua, SHI Guang-yao. Supervised Multi-manifold Discriminant Embedding Method for Hyperspectral Remote Sensing Image Classification[J]. Acta Electronica Sinica, 2020, 48(6): 1099-1107. DOI: 10.3969/j.issn.0372-2112.2020.06.008.
流形学习方法可以发现嵌入于高维观测数据中的低维流形结构,但是传统的流形学习算法都是假设所有数据位于单一流形上,忽略了高维数据中不同的子集可能存在不同的流形.针对上述问题,本文提出一种监督多流形鉴别嵌入的维数约简方法,并应用于高光谱遥感影像分类.该方法首先利用样本数据的类别标签进行多子流形划分,在此基础上采用图嵌入理论构造流形内图和流形间图,然后通过最小化流形内距离同时最大化流形间距离以增强类内数据聚集性和类间数据分散性,提取低维鉴别特征,改善地物分类性能.在University of Pavia (PaviaU)和Kennedy Space Center (KSC)高光谱数据集上的实验表明,相较于其他单流形算法和多流形算法,该方法取得了更高的分类精度,在随机选取2%训练样本时,其总体分类精度分别达到88.04%和84.53%,有效提升了地物分类性能.
Manifold learning method can find the low-dimensional manifold structures embedded in high-dimensional data. However
the traditional manifold learning algorithms assume that all samples lie on a single manifold
while the samples in different subsets may belong to different sub-manifolds. To solve the above problem
a new dimensionality reduction (DR) method termed supervised multi-manifold discriminant embedding (SMMDE) is proposed for classification of hyperspectral remote sensing image. At first
the proposed method explore the labels of HSI data to divide samples into different sub-manifolds. Based on the graph embedding framework
the intra-manifold and inter-manifold graphs are constructed to represent the multi-manifold structure of HSI data
and the intra-class aggregation and inter-class separation are enhanced by minimizing the intra-manifold distance and maximizing the inter-manifold distance simultaneously. Therefore
low-dimensional discriminant features are obtained to improve the performance of HSI classification. Experimental results on the PaviaU and KSC hyperspectral data sets show that the overall classification accuracies respectively reach 88.04% and 84.53% when 2% training samples are randomly selected for training. The proposed SMMDE method can effectively improve classification performance compared with many state-of-art DR algorithms.
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