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Human Detection Using Doppler Radar Based on Physical Characteristics of Targets

机译:基于目标物理特征的多普勒雷达人体检测

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摘要

In this letter, we propose a method for detecting a human subject using Doppler radar by investigating the physical characteristics of targets. Human detection has a number of applications in security, surveillance, and search-and-rescue operations. To classify a target from the Doppler signal, several features related to the physical characteristics of a target are extracted from a spectrogram. The features include the frequency of the limb motion, stride, bandwidth of the Doppler signal, and distribution of the signal strength in a spectrogram. The main contribution of this letter is the use of stride information of a target for the classification. Owing to the different lengths of legs and kinematic signatures of the target species, a human subject occupies a unique space in the domain of the stride and the frequency of limb motion. To verify the proposed method, we investigated humans, dogs, bicycles, and vehicles using the developed continuous-wave Doppler radar. The human subject is identified by a classifier of a support vector machine (SVM) trained to the extracted features. The trained SVM can detect a human subject with an accuracy of 96% with fourfold cross validation.
机译:在这封信中,我们提出了一种通过研究目标的物理特性来使用多普勒雷达探测人体的方法。人体检测在安全性,监视以及搜索和救援操作中具有许多应用。为了从多普勒信号中对目标进行分类,需要从频谱图中提取与目标物理特征相关的多个特征。这些特征包括肢体运动的频率,步幅,多普勒信号的带宽以及频谱图中信号强度的分布。这封信的主要贡献是使用目标的步幅信息进行分类。由于腿的长度不同和目标物种的运动学特征,人类受试者在步幅和肢体运动的频率范围内占据了独特的空间。为了验证所提出的方法,我们使用开发的连续波多普勒雷达对人,狗,自行车和车辆进行了调查。通过训练针对提取的特征的支持向量机(SVM)的分类器来识别人类对象。经过训练的SVM通过四重交叉验证可以检测出96%的人类受试者。

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