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Multi-Aspect Angle Classification of Human Radar Signatures

机译:人雷达签名的多谱角分类

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The human micro-Doppler signature is a unique signature caused by the time-varying motion of each point on the human body, which can be used to discriminate humans from other targets exhibiting micro-Doppler, such as vehicles, tanks, helicopters, and even other animals. Classification of targets based on micro-Doppler generally involves joint time-frequency analysis of the radar return coupled with extraction of features that may be used to identify the target. Although many techniques have been investigated, including artificial neural networks and support vector machines, almost all suffer a drastic drop in classification performance as the aspect angle of human motion relative to the radar increases. This paper focuses on the use of radar networks to obtain multi-aspect angle data and thereby ameliorate the dependence of classification performance on aspect angle. Knowledge of human walking kinematics is exploited to generate a fuse spectrogram that incorporates estimates of model parameters obtained from each radar in the network. It is shown that the fused spectrogram better approximates the truly underlying motion of the target observed as compared with spectrograms generated from individual nodes.
机译:人体微多普勒签名是由人体上每个点的时变运动引起的独特签名,这可以用于区分来自表现出微多普勒的其他目标的人,例如车辆,罐,直升机,甚至其他动物。基于微多普勒的目标分类通常涉及与可用于识别目标的特征的提取的雷达返回的关节时频分析。尽管已经研究了许多技术,但包括人工神经网络和支持向量机,但几乎所有都遭受了分类性能的激烈下降,因为当人类运动相对于雷达增加而增加。本文侧重于使用雷达网络获得多宽角度数据,从而改善分类性能对方面角度的依赖性。利用人行道运动学的知识,用于生成熔融频谱图,该熔接频谱图融合了从网络中的每个雷达获得的模型参数的估计。结果表明,与从各个节点产生的谱图相比,融合谱图更好地近似于观察到的目标的真正基础运动。

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