Supervised Classification of Multispectral Images: A Comparative Study

Radja Kheddam, A. Tahraoui, A. B. Aissa
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Abstract

This work focuses on a satellite data supervised classification which is one of the most important topic in satellite image processing domain. A comparative study is carried out between statistical and commonly used classifiers in one hand, and relatively new adaptive classifiers that fall under the umbrella term of metaheuristic classifiers, on the other hand. The general purpose of these classifiers is to generate the most accurate land use and land cover mapping. The comparative study aims to state of the metaheuristic classifiers (bio-inspired algorithms seen as optimization and minimization algorithms) robustness over the statistical classifiers. The main drivers for investigating these methods are also addressed. The concerned classifiers are used for a supervised classification of a remotely sensed multiband image covering the East part of the capital city Algiers. Following the resulted classification maps and their assessment, it is concluded that 1) statistical classifiers are not as effective and reliable as metaheuristic classifiers, and 2) the immune classifier may offer a viable alternative to the genetic classifier in terms of precision and time consuming.
多光谱图像的监督分类:比较研究
卫星数据监督分类是卫星图像处理领域的重要课题之一。在统计分类器和常用分类器之间进行了比较研究,另一方面,相对较新的自适应分类器属于元启发式分类器的总称。这些分类器的一般目的是生成最准确的土地利用和土地覆盖地图。比较研究的目的是状态的元启发式分类器(生物启发算法被视为优化和最小化算法)鲁棒性优于统计分类器。还讨论了研究这些方法的主要驱动因素。使用相关分类器对覆盖首都阿尔及尔东部的遥感多波段图像进行监督分类。根据得到的分类图及其评估,得出结论:1)统计分类器不如元启发式分类器有效和可靠;2)在精度和耗时方面,免疫分类器可能是遗传分类器的可行选择。
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