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Radar micro-Doppler based human activity classification for indoor and outdoor environments

机译:基于雷达微多普勒的室内和室外环境的人类活动分类

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This paper presents the results of our experimental investigation into how different environments impact the classification of human motion using radar micro-Doppler (MD) signatures. The environments studied include free space, through-the-wall, leaf tree foliage, and needle tree foliage. Results on presented on classification of the following three motions: crawling, walking, and jogging. The classification task was designed how to best separate these movements. The human motion data were acquired using a monostatic coherent Doppler radar operating in the C-band at 6.5 GHz from a total of six human subjects. The received signals were analyzed in the time-frequency domain using the Short-time Fourier Transform (STFT) which was used for feature extraction. Classification was performed using a Support Vector Machine (SVM) using a Radial Basis Function (RBF). Classification accuracies in the range 80-90% were achieved to separate the three movements mentioned.
机译:本文介绍了我们对不同环境如何利用雷达微多普勒(MD)签名影响人类运动分类的实验研究的结果。所学习的环境包括自由空间,墙壁,叶树叶和针树叶。结果提出了以下三项动作的分类:爬行,走路和慢跑。分类任务是设计如何最好地分离这些动作。使用在6.5GHz的C波段中操作的单体相干多普勒雷达从总共六个人受试者获得人体运动数据。使用用于特征提取的短时傅里叶变换(STFT)在时频域中分析所接收的信号。使用径向基函数(RBF)使用支持向量机(SVM)进行分类。达到80-90%范围内的分类精度以分离提到的三种运动。

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