An Incremental Isomap Method for Hyperspectral Dimensionality Reduction and Classification
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Published:2021-06-01
Issue:6
Volume:87
Page:445-455
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ISSN:0099-1112
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Container-title:Photogrammetric Engineering & Remote Sensing
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language:en
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Short-container-title:photogramm eng remote sensing
Author:
Ma Yi,Zheng Zezhong,Ma Yutang,Zhu Mingcang,Huang Ran,Chen Xueye,Peng Qingjun,He Yong,Lu Yufeng,Zhou Guoqing,Liu Zhigang,Li Mujie
Abstract
Many manifold learning algorithms conduct an eigen vector analysis on a data-similarity matrix with a size of N×N, where N is the number of data points. Thus, the memory complexity of the analysis is no less than O(N2). We pres- ent in this article an incremental manifold
learning approach to handle large hyperspectral data sets for land use identification. In our method, the number of dimensions for the high-dimensional hyperspectral-image data set is obtained with the training data set. A local curvature varia- tion algorithm is utilized to sample a subset
of data points as landmarks. Then a manifold skeleton is identified based on the landmarks. Our method is validated on three AVIRIS hyperspectral data sets, outperforming the comparison algorithms with a k–nearest-neighbor classifier and achieving the second best performance with support
vector machine.
Publisher
American Society for Photogrammetry and Remote Sensing
Subject
Computers in Earth Sciences