基于跌倒检测的人体骨骼关节动力学建模

Sania Zahan, G. Hassan, A. Mian
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引用次数: 1

摘要

人口老龄化的速度越来越快,需要更好的护理和支持系统。跌倒是老年人经常遇到的严重问题,会造成严重的长期健康问题。由于隐私问题,视频流的跌倒检测对于现实应用来说并不是一个有吸引力的选择。现有的方法试图通过使用非常低分辨率的摄像机或视频加密来解决这个问题。然而,这种方法并不能完全保证隐私。身体上的关键点,如骨骼关节,可以传递关于运动动力学和连续姿势变化的重要信息,这些信息对跌倒检测至关重要。骨骼关节已经被用于特征提取,但图像识别模型忽略了跨帧的关节依赖性,这对动作分类很重要。此外,现有的模型被过度参数化,或者在具有很少活动类的小数据集上进行评估。我们提出了一种高效的图卷积网络模型,该模型利用人体骨骼关节的时空依赖关系和动态特性来进行准确的跌倒检测。我们的方法利用骨架关节具有鲁棒并发时空特征的动态表示。我们在三个大型数据集上进行了广泛的实验。与大多数现有方法相比,我们提出的方法的模型尺寸明显更小,在大规模NTU数据集上获得了最先进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Human Skeleton Joint Dynamics for Fall Detection
The increasing pace of population aging calls for better care and support systems. Falling is a frequent and critical problem for elderly people causing serious long-term health issues. Fall detection from video streams is not an attractive option for real-life applications due to privacy issues. Existing methods try to resolve this issue by using very low-resolution cameras or video encryption. However, privacy cannot be ensured completely with such approaches. Key points on the body, such as skeleton joints, can convey significant information about motion dynamics and successive posture changes which are crucial for fall detection. Skeleton joints have been explored for feature extraction but with image recognition models that ignore joint dependency across frames which is important for the classification of actions. Moreover, existing models are over-parameterized or evaluated on small datasets with very few activity classes. We propose an efficient graph convolution network model that exploits spatio-temporal joint dependencies and dynamics of human skeleton joints for accurate fall detection. Our method leverages dynamic representation with robust concurrent spatiotemporal characteristics of skeleton joints. We performed extensive experiments on three large-scale datasets. With a significantly smaller model size than most existing methods, our proposed method achieves state-of-the-art results on the large scale NTU datasets.
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