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Person Identification Using Micro-Doppler Signatures of Human Motions and UWB Radar

机译:使用人体运动和UWB雷达的微多普勒签名识别人

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As a typical task of passive biometrics, behavior-based person identification has been studied extensively in recent years. This letter proposes the use of the ultrawideband impulse radar for person identification based upon the micro-Doppler signatures of human motions. A new convolutional neural network (CNN) architecture is proposed for taking advantage of the hierarchical features. The experimental results show that, by utilizing the micro-Doppler signatures of the six selected human motions, the task of person identification can be accurately achieved. Both traditional algorithms and landmark CNN algorithms are chosen for comparison, and the proposed model performs better than the others. Especially when the motion of "running" is adopted to identify persons, the model achieves 95.21% accuracy on the identification of 15 people.
机译:作为被动生物识别技术的典型任务,近年来,基于行为的人员识别已得到广泛研究。这封信建议根据人体运动的微多普勒信号,将超宽带脉冲雷达用于人员识别。提出了一种新的卷积神经网络(CNN)架构,以利用分层特征。实验结果表明,利用六个人体运动的微多普勒签名,可以准确地完成人的识别任务。传统算法和标志性CNN算法都被选择用于比较,并且所提出的模型比其他模型具有更好的性能。尤其是当采用“跑步”动作来识别人员时,该模型在识别15个人时达到了95.21%的准确率。

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