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Radar-Based Non-intrusive Fall Motion Recognition using Deformable Convolutional Neural Network

机译:基于可变形卷积神经网络的基于雷达的非侵入式跌倒运动识别

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Radar is an attractive sensing technology for remote and non-intrusive human health monitoring and elderly fall detection due to its ability to work in low lighting conditions, its invariance to the environment, and its ability to operate through obstacles. Radar reflections from humans produce unique micro-Doppler signatures that can be used for classifying human activities and fall motion. However, radar-based elderly fall detection need to handle the indistinctive inter-class differences and large intra-class variations of human fall-motion in a real-world situation. Further, the radar placement in the room and varying aspect angle of the falling subject could result in differing radar micro-Doppler signature of human fall-motion. In this paper, we use a compact short-range 60-GHz frequency modulated continuous wave radar for detecting human fall motion using a novel deformable deep convolutional neural network with novel 1-class contrastive loss function in conjunction to focus loss to recognize elderly fall and address several of these signal processing system challenges. We demonstrate the performance of our proposed system in laboratory conditions under staged fall motion.
机译:雷达是一种有吸引力的传感技术,可用于远程和非侵入式人类健康监测以及老人跌倒检测,这是因为它具有在低光照条件下工作的能力,对环境的不变性以及能够通过障碍物进行操作的能力。来自人类的雷达反射会产生独特的微多普勒信号,可用于对人类活动和跌倒运动进行分类。但是,基于雷达的老年人跌倒检测需要处理现实世界中人类跌倒运动的明显类间差异和大类内差异。此外,雷达在房间中的放置以及跌落对象的变化的纵横角度可能会导致人类跌倒运动的雷达微多普勒信号不同。在本文中,我们使用紧凑型短程60 GHz频率调制连续波雷达,使用具有新颖的1类对比损失函数的新型可变形深度卷积神经网络结合焦点损失来识别老年人的跌倒和跌倒,从而检测人的跌倒运动。解决这些信号处理系统挑战中的一些挑战。我们演示了我们提出的系统在实验室条件下分阶段跌落运动的性能。

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