A new band selection method for multispectral data based on criterion function of information capability

Sharon Alpert
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Abstract

Multispectral remote sensing is one of the most popular techniques in the earth observation, because this technique can provide information of ground objects on Earth’s surface using hundreds of narrow bands. However, multispectral images produces a very large volume of data. Processing the huge volume of information is one of most important and actual problems of remote sensing. The rapid development of the  remote sensing demand to develop the data processing algorithms. But at present data processing techniques cannot give accurate results. If  we use traditional methods to process multispectral images, the volume of  the data increases. The main goal of the band selection is to choose the optimal combination of  spectral bands for the solution of the particular remote sensing task. This process is important because different bands are sensitive to different objects. Selecting the right bands can help to optimize the detection of different ground objects. Some spectral bands are more sensitive to minerals, while others are more sensitive to vegetation  or water bodies. Under a small number of training samples, the classification accuracy of multispectral images decreases when the volume of multispectral data increases. Usually adjacent bands are highly correlated, and some spectral bands may not carry unique information. That’s why it is necessarily to reduce the dimensionality of  multispectral data. It helps to store, process, transmit information more efficiently and to reduce the computational costs while processing images. The different modern methods of multispectral band selection are also considered and analyzed in this work. It also is proposed a new method to select spectral bands, which is based on the concept of criterion function of information capability of spectral bands. In this article some examples using criterion function of information capability are considered too.
基于信息能力准则函数的多光谱数据选带新方法
多光谱遥感是地球观测中最流行的技术之一,因为它可以利用数百个窄带提供地球表面地面物体的信息。然而,多光谱图像产生的数据量非常大。海量信息的处理是遥感技术中最重要、最现实的问题之一。遥感技术的快速发展对数据处理算法提出了更高的要求。但目前的数据处理技术还不能给出准确的结果。如果用传统的方法处理多光谱图像,数据量会增加。波段选择的主要目标是选择最优的光谱波段组合来解决特定的遥感任务。这个过程很重要,因为不同的波段对不同的物体敏感。选择合适的波段有助于优化对不同地物的探测。一些光谱带对矿物质更敏感,而另一些则对植被或水体更敏感。在训练样本数量较少的情况下,随着多光谱数据量的增加,多光谱图像的分类精度降低。通常相邻波段是高度相关的,有些波段可能不携带唯一的信息。这就是为什么对多光谱数据进行降维是必要的。它有助于更有效地存储、处理和传输信息,并在处理图像时减少计算成本。本文还对不同的现代多光谱波段选择方法进行了考虑和分析。提出了一种基于谱带信息能力准则函数的谱带选择新方法。本文还考虑了信息能力准则函数的一些应用实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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