改进了用不等式法选择HSI分类频带的滤波算法

M. Merzouqi, H. Nhaila, E. Sarhrouni, A. Hammouch
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引用次数: 2

摘要

高光谱图像(HSI)是一种遥感工具,可以精确地定义区域分类。实际上,覆盖地面的几幅图像都是真实的,它们提供了相关的信息,但其中一些受到大气噪声的影响,而另一些则包含了冗余的信息。为了降低高光谱图像的维数,许多研究使用互信息(MI)和基于归一化互信息的启发式方法来选择合适的波段进行高光谱图像的分类。这里我们期望一些方法提出了基于MI度量的过滤策略,也有带有错误概率的包装策略,后者比过滤策略更有效,但成本更高。本文将引入一种带有误差概率度量的滤波策略,以便以最优的方式提高选择频带的精度。该方法可以提高滤波策略的性能。研究使用HSI AVIRIC92AV3C进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved filter algorithm using inequality fano to select bands for HSI classification
Hyperspectral imagery (HSI) is a remote sensing tool that precisely serves to define the classification of the regions. In fact, the coverage of several images of the ground truth, which provide relevant information, but some of them are influenced by atmospheric noise, and others contain a redundant information. To reduce the dimensionality of Hyperspectral Images, numerous studies using mutual information (MI) also the normalized Mutual information based heuristic to select the appropriate bands for the classification of HSI. Here we expect some methods present a filter strategy based on the measure of (MI), also there is wrapper strategies with error probability, the latter is more efficient than filter strategy, but more expensive. In this paper we will introduce a filter strategy with the error probability measure in order to have more precision in the selections bands with an optimal manner. This method can improve the filter strategy performance. The studies are conducted using HSI AVIRIC92AV3C.
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