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Human Activities Detection and Classification Based on Micro-Doppler Signatures Near the Baseline of Forward Scattering Radar

机译:基于前向散射雷达基线附近的微多普勒签名的人类活动检测和分类

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Fall poses a major problem, which raises the concern of elderly populations aged 65 and above in all over the world. In this paper, we propose Forward Scattering Radar system as a Doppler sensor in distinguishing features of fall events from non-fall activities. The signal features of joint time-frequency representations are used for detection, while the support vector machine, which is based on the short-time Fourier transform feature, has been used in the classification process. An indoor experiment was conducted to emulate the elderly people's daily activities and the falling down event, where 50 trials were carried out by five adults for each of the activity. The detection results indicated that the forward scattering radar has a high ability in detecting the micro-Doppler signatures generated from the low speed motion of a human body segments during daily activities. The preliminary classification results are 100% for the corresponding free fall-sitting on a chair, free fall-sitting on the floor, and for all three activities.
机译:秋季是一个主要问题,这引起了全世界65岁及65岁以上老年人的关注。在本文中,我们提出前向散射雷达系统作为多普勒传感器,以区分坠落事件与非坠落活动的特征。联合时频表示的信号特征用于检测,而基于短时傅立叶变换特征的支持向量机已用于分类过程。进行了室内实验,以模拟老年人的日常活动和跌倒事件,其中,五位成年人每次进行50次试验。探测结果表明,前向散射雷达具有很高的探测能力,能够探测到人体在日常活动中低速运动产生的微多普勒信号。对于椅子的相应自由落体,地板上的自由落体以及所有三个活动,初步分类结果均为100%。

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