Multispectral target detection by statistical methods

S. Demirci, B. Yazgan, O. Ersoy
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引用次数: 8

Abstract

In this study, targets and nontargets in a multispectral image were characterized in terms of their spectral features. Then, target detection procedures were performed. Target detection problem was considered as a two-class classification problem with four-band (Red-Green-Blue-Near Infrared) images. For this purpose, statistical techniques were employed. These are Parallelepiped, Euclidean Distance and Maximum Likelihood (ML) algorithms, which belong to supervised statistical classification methods. To obtain the training data belonging to each class, the training regions were selected as polygonal. After determination of the parameters of the algorithms with the training set, classification was accomplished at each pixel as target or background. Consequently, classification results were displayed on thematic maps. The algorithms were trained with the same training sets, and their comparative performances were tested under various situations. During these studies, the effects of training area selection and various levels of thresholds were evaluated based on the efficiency of the algorithms. The selection of appropriate technique was proposed, dependent upon different kinds of targets. The training area selection especially affected the performance of the ML algorithm. In spite of the fact that the training area selected as a target class did not vary, insufficient representation of the background classes in terms of training area resulted in high false alarm rate. Good representation of the background classes in the training set increased the detection rate while the false alarm rate was very much decreased. The training area selection was less critical with the performances of the Euclidean Distance and the Parallelepiped algorithms. These were more heavily dependent on the target training area.
统计方法的多光谱目标检测
本研究对多光谱图像中的目标和非目标进行了光谱特征表征。然后,执行目标检测程序。将目标检测问题视为四波段(红-绿-蓝-近红外)图像的两类分类问题。为此目的,采用了统计技术。这些算法是平行六面体、欧几里得距离和最大似然算法,它们属于监督统计分类方法。为了得到属于每一类的训练数据,训练区域被选择为多边形。用训练集确定算法参数后,对每个像素点作为目标或背景进行分类。分类结果显示在专题地图上。使用相同的训练集对算法进行训练,并在不同情况下对算法的性能进行比较测试。在这些研究中,基于算法的效率,评估了训练区域选择和不同级别阈值的效果。根据不同的目标类型,提出了合适的技术选择。训练区域的选择尤其影响机器学习算法的性能。尽管选择的训练区域作为目标类没有变化,但背景类在训练区域方面的代表性不足,导致误报率高。训练集中背景类的良好表征提高了检测率,同时大大降低了误报率。欧几里得距离算法和平行六面体算法对训练区域选择的影响较小。这些在很大程度上取决于目标训练区域。
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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