Shin Jungpil, Miah Abu Saleh Musa, Egawa Rei, Hirooka Koki, Hasan Md Al Mehedi, Tomioka Yoichi, Hwang Yong Seok
School of Computer Science and Engineering, The University of Aizu, Aizuwakamatsu, Japan.
Department of Computer Science and Engineering, Rajshahi University of Engineering & Technology, Rajshahi, 6204, Bangladesh.
Sci Rep. 2025 Mar 27;15(1):10635. doi: 10.1038/s41598-025-95508-7.
The prevention of falls is paramount in modern healthcare, particularly for the elderly, as falls can lead to severe injuries or even fatalities. Additionally, the growing incidence of falls among the elderly, coupled with the urgent need to prevent suicide attempts resulting from medication overdose, underscores the critical importance of accurate and efficient methods of detecting a fall. This makes a computer-aided fall detection system necessary to save elderly people's lives worldwide. Many researchers have been working to develop fall detection systems. However, the existing systems often struggle with problems such as unsatisfactory accuracy, limited robustness, high computational complexity, and sensitivity to environmental factors. In response to these challenges, this paper proposes a novel three-stream spatio-temporal feature-based human fall detection system. Our system incorporates joint skeleton-based spatial and temporal Graph Convolutional Network (GCN) features, joint motion-based spatial and temporal GCN features, and residual connections-based features. Each stream employs adaptive graph-based feature aggregation and consecutive separable convolutional neural networks (Sep-TCN), significantly reducing the computational complexity and the number of parameters of the model compared to prior systems. Experimental results on multiple datasets demonstrate the superior effectiveness and efficiency of our proposed system, with accuracies of 99.68%, 99.97%, 99.47 % and 98.97% achieved on the ImViA, Fall-UP, FU-Kinect and UR-Fall datasets, respectively. The remarkable performance of our system highlights its superiority, efficiency, and generalizability in real-world human fall detection scenarios, offering significant advancements in healthcare and societal well-being.
在现代医疗保健中,预防跌倒至关重要,尤其是对于老年人而言,因为跌倒可能导致严重伤害甚至死亡。此外,老年人跌倒的发生率不断上升,再加上迫切需要防止因药物过量导致的自杀企图,这凸显了准确高效的跌倒检测方法的至关重要性。这使得计算机辅助跌倒检测系统对于拯救全球老年人的生命变得必要。许多研究人员一直在致力于开发跌倒检测系统。然而,现有系统常常面临诸如准确性不尽人意、鲁棒性有限、计算复杂度高以及对环境因素敏感等问题。针对这些挑战,本文提出了一种基于新颖的三流时空特征的人体跌倒检测系统。我们的系统融合了基于关节骨骼的时空图卷积网络(GCN)特征、基于关节运动的时空GCN特征以及基于残差连接的特征。每个流都采用基于自适应图的特征聚合和连续可分离卷积神经网络(Sep-TCN),与先前系统相比,显著降低了模型的计算复杂度和参数数量。在多个数据集上的实验结果证明了我们所提出系统的卓越有效性和效率,在ImViA、Fall-UP、FU-Kinect和UR-Fall数据集上分别达到了99.68%、99.97%、99.47%和98.97%的准确率。我们系统的卓越性能突出了其在实际人体跌倒检测场景中的优越性、效率和通用性,为医疗保健和社会福祉带来了重大进步。