一种基于雷达测量的未知目标分层分类框架

M. Ruotsalainen, Henna Perälä, Minna Väilä, Juha Jylhä, Mikko Kauhanen
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引用次数: 0

摘要

现实生活中的目标识别往往需要对未知目标进行适当的处理。这类目标是自动目标识别系统尚未训练识别的目标。然而,这些目标可能是有趣的,因此应该进一步分析它们。在本文中,我们提出了一种新的分析未知目标的雷达测量数据的框架,以便将其纳入目标分类的层次分类中进行目标识别。除了初步信息外,雷达测量分析的一个重要部分是将测量到的特征与已知目标类型和类别的特征进行比较。我们使用这种分析的结果来指示类分类法中添加未知目标的潜在位置。该框架允许在再次遇到以前观察到的未知目标类型时识别它们。我们利用多雷达系统的真实数据,通过实验验证了所提出的框架。在实验中,我们通过检查两种情况下的目标识别来证明我们方法的可行性:使用我们的框架和不使用它。我们发现,该框架能够增强雷达目标识别中未知目标的处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Framework for Using Radar Measurements of Unknown Targets in Hierarchical Classification
Real-life target recognition often requires appropriate processing of unknown targets. Such targets are the ones that the automatic target recognition system has not been trained to identify. These targets may, however, be interesting whereupon they should be further analyzed. In this paper, we propose a novel framework for analyzing radar measurements of unknown targets in order to incorporate them into a hierarchical target class taxonomy for the target recognition. Besides the preliminary information, a vital part in the analysis of the radar measurement is the comparison between the measured signature and the signatures of the known target types and categories. We use the results of such analysis to indicate potential spots in the class taxonomy where to add the unknown target. The framework allows identification of unknown target types that have been previously observed, when they are encountered again. We demonstrate the proposed framework through an experiment using the real data of a multi-radar system. In the experiments, we show the feasibility of our approach by examining target recognition in two cases: using our framework and without it. We find that the proposed framework enables enhanced processing of unknown targets in radar target recognition.
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