Kong Xiangbo, Chen Lehan, Wang Zhichen, Chen Yuxi, Meng Lin, Tomiyama Hiroyuki
Graduate School of Science and Engineering, Ritsumeikan University, Kyoto 525-8577, Japan.
Department of Electronic and Computer Engineering, College of Science and Engineering, Ritsumeikan University, Kyoto 525-8577, Japan.
Sensors (Basel). 2019 Aug 30;19(17):3768. doi: 10.3390/s19173768.
Vision-based fall-detection methods have been previously studied but many have limitations in terms of practicality. Due to differences in rooms, users do not set the camera or sensors at the same height. However, few studies have taken this into consideration. Moreover, some fall-detection methods are lacking in terms of practicality because only standing, sitting and falling are taken into account. Hence, this study constructs a data set consisting of various daily activities and fall events and studies the effect of camera/sensor height on fall-detection accuracy. Each activity in the data set is carried out by eight participants in eight directions and taken with the depth camera at five different heights. Many related studies heavily depended on human segmentation by using Kinect SDK but this is not reliable enough. To address this issue, this study proposes Enhanced Tracking and Denoising Alex-Net (ETDA-Net) to improve tracking and denoising performance and classify fall and non-fall events. Experimental results indicate that fall-detection accuracy is affected by camera height, against which ETDA-Net is robust, outperforming traditional deep learning based fall-detection methods.
基于视觉的跌倒检测方法此前已被研究,但许多方法在实用性方面存在局限性。由于房间不同,用户不会将摄像头或传感器设置在相同高度。然而,很少有研究考虑到这一点。此外,一些跌倒检测方法在实用性方面存在不足,因为只考虑了站立、坐着和跌倒的情况。因此,本研究构建了一个由各种日常活动和跌倒事件组成的数据集,并研究了摄像头/传感器高度对跌倒检测准确性的影响。数据集中的每项活动由八名参与者在八个方向进行,并使用深度摄像头在五个不同高度进行拍摄。许多相关研究严重依赖于使用Kinect SDK进行人体分割,但这不够可靠。为了解决这个问题,本研究提出了增强跟踪与去噪Alex-Net(ETDA-Net),以提高跟踪和去噪性能,并对跌倒和非跌倒事件进行分类。实验结果表明,跌倒检测准确性受摄像头高度影响,而ETDA-Net对此具有鲁棒性,优于传统的基于深度学习的跌倒检测方法。