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SSHFD: Single Shot Human Fall Detection with Occluded Joints Resilience

机译:SSHFD:单次射击人类坠落检测与闭合关节弹性

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Falling can have fatal consequences for elderly people especially if the fallen person is unable to call for help due to loss of consciousness or any injury. Automatic fall detection systems can assist through prompt fall alarms and by minimizing the fear of falling when living independently at home. Existing vision-based fall detection systems lack generalization to unseen environments due to challenges such as variations in physical appearances, different camera viewpoints, occlusions, and background clutter. In this paper, we explore ways to overcome the above challenges and present Single Shot Human Fall Detector (SSHFD), a deep learning based framework for automatic fall detection from a single image. This is achieved through two key innovations. First, we present a human pose based fall representation which is invariant to appearance characteristics. Second, we present neural network models for 3d pose estimation and fall recognition which are resilient to missing joints due to occluded body parts. Experiments on public fall datasets show that our framework successfully transfers knowledge of 3d pose estimation and fall recognition learnt purely from synthetic data to unseen real-world data, showcasing its generalization capability for accurate fall detection in real-world scenarios.
机译:跌倒可能对老年人的致命后果特别是如果堕落的人因意识丧失或任何伤害而无法呼吁帮助。自动跌落检测系统可以通过及时跌倒警报,并通过最大限度地减少在家里独立生活时跌落的恐惧。由于诸如物理出场的挑战,不同的相机观点,闭塞和背景杂波等挑战,现有的基于视觉的坠落检测系统缺乏未经看明环境的概括环境。在本文中,我们探讨了克服上述挑战和目前单射人坠落探测器(SSHFD)的方法,这是一种基于深度学习的自动下降检测的框架。这是通过两个关键创新实现的。首先,我们提出了一种基于人的姿势的秋季表示,其不变于外观特征。其次,我们呈现用于3D姿势估计和坠落识别的神经网络模型,其由于遮挡体部件而言是缺失关节的弹性。公共跌倒数据集的实验表明,我们的框架纯粹从合成数据纯粹地转移了3D姿势估计和堕落识别的知识,从而从合成数据到取消了真实世界数据,展示了其在现实世界方案中准确降低检测的泛化能力。

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