首页> 外文会议>International Conference on Signal Processing(ICSP'06); 20061116-20; Guilin(CN) >Band Selection Based On A New Seperability Measure For Hyperspectral Images Classification
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Band Selection Based On A New Seperability Measure For Hyperspectral Images Classification

机译:基于新可分离性度量的高光谱图像波段选择

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摘要

Classification is an important application of hyperspectral images. In terms of classification, separability measures are usually used for band selection, and Bhattacharyya distance (BHD) is a conventional separability measure. In this paper, a new separability measure, weighted Bhattacharyya distance (W-BHD) is introduced and a band selection algorithm based on it is proposed. The proposed algorithm composes of four steps: initial subset selection, weights calculation, W-BHD calculation and final subset selection. W-BHD calculation is crucial part of the proposed algorithm. W-BHD assigns different weights to each class pair, which improves classification accuracy by stressing importance on hard-to-separate class pairs. Numerical experiments are conducted on two hyperspectral data respectively, and results show that W-BHD greatly outperforms other separability measures based on BHD.
机译:分类是高光谱图像的重要应用。在分类方面,可分离性度量通常用于频带选择,而Bhattacharyya距离(BHD)是常规的可分离性度量。本文提出了一种新的可分离性度量,即加权Bhattacharyya距离(W-BHD),并提出了一种基于它的频带选择算法。该算法由四个步骤组成:初始子集选择,权重计算,W-BHD计算和最终子集选择。 W-BHD计算是该算法的关键部分。 W-BHD为每个班级对分配不同的权重,通过强调难以区分的班级对的重要性来提高分类准确性。分别对两个高光谱数据进行了数值实验,结果表明W-BHD大大优于其他基于BHD的可分离性度量。

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