A Vision-Based System for In-Bed Posture Tracking

Shuangjun Liu, S. Ostadabbas
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引用次数: 26

Abstract

Tracking human sleeping postures over time provides critical information to biomedical research including studies on sleeping behaviors and bedsore prevention. In this paper, we introduce a vision-based tracking system for pervasive yet unobtrusive long-term monitoring of in-bed postures in different environments. Once trained, our system generates an in-bed posture tracking history (iPoTH) report by applying a hierarchical inference model on the top view videos collected from any regular off-the-shelf camera. Although being based on a supervised learning structure, our model is person-independent and can be trained off-line and applied to new users without additional training. Experiments were conducted in both a simulated hospital environment and a home-like setting. In the hospital setting, posture detection accuracy using several mannequins was up to 91.0%, while the test with actual human participants in a home-like setting showed an accuracy of 93.6%.
一种基于视觉的床上姿势跟踪系统
随着时间的推移,跟踪人类的睡眠姿势为生物医学研究提供了重要信息,包括睡眠行为和褥疮预防的研究。在本文中,我们介绍了一种基于视觉的跟踪系统,用于在不同环境中对床上姿势进行普遍而不显眼的长期监测。经过训练后,我们的系统通过对从任何普通相机收集的俯视图视频应用分层推理模型,生成床上姿势跟踪历史(iPoTH)报告。虽然基于监督学习结构,但我们的模型是独立于个人的,可以离线训练并应用于新用户,而无需额外的训练。实验在模拟医院环境和家庭环境中进行。在医院环境中,使用几个人体模型的姿势检测准确率高达91.0%,而在类似家庭环境中与真人参与者进行的测试显示准确率为93.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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