Evaluating Pose Estimation as a Solution to the Fall Detection Problem

Y. R. Serpa, Matheus Batista Nogueira, Pedro Paulo Macêdo Neto, M. A. Rodrigues
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引用次数: 12

Abstract

In this age of evolving technological capabilities, assisted living has proven useful to ease the frailty that comes with aging. Within this context, the detection and prevention of accidents are paramount to ensure a longer life expectancy for the elderly. Over the years, many approaches for fall detection have been proposed, such as ambient sensors, wearable devices, and automated camera monitoring. A recent approach is to use pose estimation software to identify humans and pinpoint the location of their most important joints. This pose information can be later used as features for an effective fall detection system. This scenario begs the question: Can pose estimation methods be as effective as the sensor or other camera-based ones? To answer this question, we analyzed three pose estimation frameworks, totalizing eleven models, paired with a simple neural network classifier. In our experiments, we have obtained competitive results among the state-of-the-art on the UR Fall Detection dataset, a multi-modal fall detection benchmark, comprised of RGB, depth, and acceleration data. More specifically, our best model achieved a sensitivity rate of 94.5% and a specificity rate of 99.9%, in line with the best camera and sensor-based solutions.
姿态估计作为跌倒检测问题的一种解决方案
在这个技术能力不断发展的时代,辅助生活已经被证明对缓解衰老带来的虚弱是有用的。在这种情况下,发现和预防事故对于确保老年人的预期寿命延长至关重要。多年来,人们提出了许多检测跌倒的方法,如环境传感器、可穿戴设备和自动摄像头监控。最近的一种方法是使用姿势估计软件来识别人类并精确定位他们最重要关节的位置。这些姿态信息以后可以用作有效的跌倒检测系统的特征。这种情况引出了一个问题:姿态估计方法是否能像传感器或其他基于摄像头的方法一样有效?为了回答这个问题,我们分析了三个姿态估计框架,总共11个模型,并与一个简单的神经网络分类器配对。在我们的实验中,我们在UR跌倒检测数据集上获得了最先进的竞争结果,这是一个多模态跌倒检测基准,由RGB、深度和加速度数据组成。更具体地说,我们的最佳模型实现了94.5%的灵敏度和99.9%的特异性,与基于相机和传感器的最佳解决方案一致。
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