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A fast two-stage classification method for high-dimensional remote sensing data

机译:高维遥感数据的快速两阶段分类方法

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摘要

Classification for high-dimensional remotely sensed data generally requires a large set of data samples and enormous processing time, particularly for hyperspectral image data. In this paper, the authors present a fast two-stage classification method composed of a band selection (BS) algorithm with feature extraction/selection (FSE) followed by a recursive maximum likelihood classifier (MLC). The first stage is to develop a BS algorithm coupled with FSE for data dimensionality reduction. The second stage is to design a fast recursive MLC (RMLC) so as to achieve computational efficiency. The experimental results show that the proposed recursive MLC, in conjunction with BS and FSE, reduces computing time significantly by a factor ranging from 30 to 145, as compared to the conventional MLC.
机译:高维遥感数据的分类通常需要大量的数据样本和大量的处理时间,特别是对于高光谱图像数据。在本文中,作者提出了一种快速的两阶段分类方法,该方法由带特征提取/选择(FSE)的带选择(BS)算法和递归最大似然分类器(MLC)组成。第一步是开发结合FSE的BS算法,以降低数据维数。第二阶段是设计快速递归MLC(RMLC),以实现计算效率。实验结果表明,与常规MLC相比,与BS和FSE结合使用的拟议递归MLC显着减少了30到145倍的计算时间。

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