The high dimensionality of hyperspectral images (HSI) that contains more than hundred bands (images) for the same region called Ground Truth Map, often imposes a heavy computational burden for image processing and complicates the learning process. In fact, the removal of irrelevant, noisy and redundant bands helps increase the classification accuracy. Band selection filter based on "Mutual Information" is a common technique for dimensionality reduction. In this paper, a categorization of dimensionality reduction methods according to the evaluation process is presented. Moreover, a new filter approach based on three variables mutual information is developed in order to measure band correlation for classification, it considers not only bands relevance but also bands interaction. The proposed approach is compared to a reproduced filter algorithm based on mutual information. Experimental results on HSI AVIRIS 92AV3C have shown that the proposed approach is very competitive, effective and outperforms the reproduced filter strategy performance. Keywords - Hyperspectral images, Classification, band Selection, Three variables Mutual Information, information gain.
翻译:超光谱图像的高维度(HSI)包含100多个波段(图像)的同一区域称为地面真象图,通常给图像处理带来沉重的计算负担,并使学习过程复杂化。事实上,去除无关紧要、吵闹和多余的波段有助于提高分类准确性。基于“双重信息”的带宽选择过滤器是减少维度的一种常见技术。本文介绍了根据评价程序对维度减少方法进行分类的方法。此外,根据三个变量的相互信息开发了一种新的过滤法,以衡量分类的波段相关性,它不仅考虑波段相关性,而且考虑波段互动。拟议方法与基于相互信息的复制的过滤算法相比。HSI AVIRIS 92AV3C的实验结果表明,拟议方法非常具有竞争性,有效,而且比再版的过滤战略效强。关键词 - 超光谱图像、分类、波段选择、三个变量相互信息、信息收益。