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A Dual Generation Adversarial Network for Human Motion Detection Using Micro-Doppler Signatures

机译:使用微多普勒签名进行人体运动检测的双代对抗网络

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摘要

Radar sensors and micro-Doppler signatures have been widely used to recognize human motions. Apart from the motion classification task, human motion detection has attracted much attention as an emerging topic. A majority of existing motion detectors are designed for a specific motion, such as falling. In some scenarios, however, a broader range of human actions is of interest, hence a general motion detector is desired. In this paper, we propose a radar-based motion detection model named dual generative adversarial network (DGN). The proposed model tackles the detection task as a one-class classification problem and is applicable to detecting various motions. Unlike prior fall detection algorithms, which depend on manually collected alien data, the DGN employs a dual generation scheme to automatically produce valid alien samples in both the pixel level and the semantic level. The model is verified on two measured radar datasets containing individual motions and interactive motions, respectively. The experimental results show that our method outperforms other existing models on the human motion detection task.
机译:雷达传感器和微多普勒签名已被广泛用于识别人类运动。除了运动分类任务外,人类运动检测吸引了很多关注作为新兴的话题。大多数现有运动检测器设计用于特定运动,例如落下。然而,在某些情况下,更广泛的人类动作是感兴趣的,因此需要一般运动检测器。在本文中,我们提出了一种基于雷达的运动检测模型,称为双生成对抗网络(DGN)。所提出的模型将检测任务作为单级分类问题解决,并且适用于检测各种运动。与依赖于手动收集的外来数据的先前秋季检测算法不同,DGN采用双生成方案来在像素级别和语义上自动生成有效的外星样本。该模型分别验证了包含单个运动和交互式运动的两个测量的雷达数据集。实验结果表明,我们的方法在人类运动检测任务上占此了现有的其他现有模型。

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