An Automatic Target Classifier using Model Based Image Processing

D. Haanpaa, G. Beach, C. Cohen
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引用次数: 0

Abstract

A primary mission of air assets is to detect and destroy enemy ground targets. In order to accomplish this mission, it is essential to detect, track, and classify contacts to determine which are valid targets. Traditional combat identification has been performed using all-weather sensors and processing algorithms designed specifically for such sensor data. Electro- optical (EO) sensors produce a very different type of data that does not lend itself to traditional combat identification algorithms. This paper will detail how we analyzed the visual and physical characteristics of a large number of potential targets. The results of this analysis were used to drive the requirements of a demonstration system. We will detail the test data we collected from the military and CAD models for likely targets, as well as overall requirements for system performance.
基于模型图像处理的自动目标分类器
空中资产的主要任务是探测和摧毁敌方地面目标。为了完成这一任务,必须检测、跟踪和分类接触,以确定哪些是有效目标。传统的作战识别是使用全天候传感器和专门为这种传感器数据设计的处理算法进行的。光电(EO)传感器产生一种非常不同类型的数据,不适合传统的战斗识别算法。本文将详细介绍我们如何分析大量潜在目标的视觉和物理特征。这个分析的结果被用来驱动演示系统的需求。我们将详细介绍从军事和CAD模型中收集的测试数据,以及系统性能的总体需求。
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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