Department of Computer Science and Information Engineering, National Chin-Yi University of Technology, Taichung 411, Taiwan.
College of Intelligence, National Taichung University of Science and Technology, Taichung 404, Taiwan.
Sensors (Basel). 2022 Jul 23;22(15):5495. doi: 10.3390/s22155495.
In the context of behavior recognition, the emerging bed-exit monitoring system demands a rapid deployment in the ward to support mobility and personalization. Mobility means the system can be installed and removed as required without construction; personalization indicates human body tracking is limited to the bed region so that only the target is monitored. To satisfy the above-mentioned requirements, the behavior recognition system aims to: (1) operate in a small-size device, typically an embedded system; (2) process a series of images with narrow fields of view (NFV) to detect bed-related behaviors. In general, wide-range images are preferred to obtain a good recognition performance for diverse behaviors, while NFV images are used with abrupt activities and therefore fit single-purpose applications. This paper develops an NFV-based behavior recognition system with low complexity to realize a bed-exit monitoring application on embedded systems. To achieve effectiveness and low complexity, a queueing-based behavior classification is proposed to keep memories of object tracking information and a specific behavior can be identified from continuous object movement. The experimental results show that the developed system can recognize three bed behaviors, namely off bed, on bed and return, for NFV images with accuracy rates of 95~100%.
在行为识别的背景下,新兴的离床监测系统需要在病房中快速部署,以支持移动性和个性化。移动性意味着系统可以根据需要进行安装和拆除,无需施工;个性化表示人体跟踪仅限于床区,以便仅监测目标。为了满足上述要求,行为识别系统旨在:(1)在小尺寸设备(通常是嵌入式系统)上运行;(2)处理一系列具有窄视场(NFV)的图像以检测与床相关的行为。通常,宽视场图像更适合获得多样化行为的良好识别性能,而 NFV 图像则用于突发活动,因此适合单一用途的应用。本文开发了一种基于 NFV 的低复杂度行为识别系统,以在嵌入式系统上实现离床监测应用。为了实现有效性和低复杂性,提出了基于队列的行为分类,以保留对象跟踪信息的记忆,并且可以从连续的对象运动中识别出特定的行为。实验结果表明,开发的系统可以识别 NFV 图像中的三种床行为,即离床、上床和返回,准确率为 95%~100%。