Department of Computer Science and Information Engineering, Chang Gung University, Kwei-Shan, Tao-Yuan, Taiwan.
Med Eng Phys. 2012 Sep;34(7):954-63. doi: 10.1016/j.medengphy.2011.10.016. Epub 2011 Dec 11.
For most elderly, unpredictable falling incidents may occur at the corner of stairs or a long corridor due to body frailty. If we delay to rescue a falling elder who is likely fainting, more serious consequent injury may occur. Traditional secure or video surveillance systems need caregivers to monitor a centralized screen continuously, or need an elder to wear sensors to detect falling incidents, which explicitly waste much human power or cause inconvenience for elders. In this paper, we propose an automatic falling-detection algorithm and implement this algorithm in a multi-camera video surveillance system. The algorithm uses each camera to fetch the images from the regions required to be monitored. It then uses a falling-pattern recognition algorithm to determine if a falling incident has occurred. If yes, system will send short messages to someone needs to be noticed. The algorithm has been implemented in a DSP-based hardware acceleration board for functionality proof. Simulation results show that the accuracy of falling detection can achieve at least 90% and the throughput of a four-camera surveillance system can be improved by about 2.1 times.
对于大多数老年人来说,由于身体虚弱,在楼梯拐角处或长廊处可能会发生意外摔倒事件。如果我们延迟救援可能晕倒的摔倒老人,可能会导致更严重的后续伤害。传统的安全或视频监控系统需要护理人员持续监控集中屏幕,或者需要老人佩戴传感器来检测摔倒事件,这显然浪费了大量人力或给老人带来不便。在本文中,我们提出了一种自动摔倒检测算法,并在多摄像机视频监控系统中实现了该算法。该算法使用每个摄像机从需要监控的区域获取图像。然后,它使用摔倒模式识别算法来确定是否发生了摔倒事件。如果是,系统将向需要注意的人发送短信。该算法已在基于 DSP 的硬件加速板上实现,以进行功能验证。仿真结果表明,摔倒检测的准确率至少可达 90%,并且四摄像机监控系统的吞吐量可提高约 2.1 倍。