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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Radar target classification using doppler signatures of human locomotion models
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Radar target classification using doppler signatures of human locomotion models

机译:使用人类运动模型的多普勒签名进行雷达目标分类

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摘要

The problem of target classification for ground surveillance Doppler radars is addressed. Two sources of knowledge are presented and incorporated within the classification algorithms: 1) statistical knowledge on radar target echo features, and 2) physical knowledge, represented via the locomotion models for different targets. The statistical knowledge is represented by distribution models whose parameters are estimated using a collected database. The physical knowledge is represented by target locomotion and radar measurements models. Various concepts to incorporate these sources of knowledge are presented. These concepts are tested using real data of radar echo records, which include three target classes: one person, two persons and vehicle. A combined approach, which implements both statistical and physical prior knowledge provides the best classification performance, and it achieves a classification rate of 99% in the three-class problem in high signal-to-noise conditions.
机译:解决了地面监视多普勒雷达的目标分类问题。提出了两种知识来源并将其纳入分类算法中:1)有关雷达目标回波特征的统计知识,以及2)通过针对不同目标的运动模型表示的物理知识。统计知识由分布模型表示,其分布参数使用收集的数据库进行估算。物理知识由目标运动和雷达测量模型表示。提出了整合这些知识来源的各种概念。这些概念使用雷达回波记录的真实数据进行了测试,其中包括三个目标类别:一个人,两个人和车辆。结合了统计和物理先验知识的组合方法可提供最佳的分类性能,并且在高信噪比条件下的三类问题中可实现99%的分类率。

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