基于视觉的病区儿童异常动作检测

Yuhang Shi, Shuli Luo, Weihong Ren, Weibo Jiang, Sufang Li, Honghai Liu
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引用次数: 0

摘要

在临床护理中,住院儿童容易发生从床上摔下等继发性损伤。避免对患者造成二次伤害已成为医疗服务质量评价的核心指标。跌倒是儿童在医院里最常见也是最危险的行为。而基于视觉的病区儿童异常动作检测,由于其外观不明显,且病区环境复杂,具有很大的挑战性。以往的方法都是利用人体骨架实现城市和工业中的异常动作检测。然而,由于其模型或Kinect摄像头无法实时获取儿童的准确骨骼,因此无法有效地检测和报警病房内住院儿童的异常行为。在本文中,我们提出了一种智能视频监控系统,旨在检测和报警病房儿童的异常行为。实验结果表明,该系统对病区儿童异常行为的检测和报警准确率达到85%,并能以每帧12ms的速度同时处理两张病床的信息。病区儿童的日常视频数据也保存在本地,这对于增加住院儿童的风险行动数据集非常有用。在未来,我们将通过获取儿童的状态信息来改进我们提出的系统,从而降低系统的误报率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision based Abnormal Action Detection of Children in Wards
In clinical care, hospitalized children are prone to get secondary injury such as falling from the bed. Avoiding secondary injury to patients has become the core indicator of medical care quality evaluation. Falls are the most common and most dangerous behavior of children in hospital. And vision based abnormal action detection of children in wards is very challenging because of the unnoticeable appearance and the complex ward environment. Previous approaches achieve anomaly action detection in urban and industry by the skeleton of human. However, they cannot effectively detect and alarm abnormal actions of hospitalized children in the ward, because their model or Kinect cameras cannot obtain the accurate skeleton of the child in real time. In this paper, we propose an intelligent video surveillance system aimed at detecting and alarming abnormal actions of children in wards. Experimental results demonstrate that our system achieve 85% accuracy in detecting and alarming abnormal actions of children in wards, and our system can process information from two beds simultaneously with a speed of 12ms per frame. The daily video data of children in the ward is also saved locally, which is exceedingly useful for augmenting risk action datasets of hospitalized children. In the future, we will improve our proposed system by obtaining state information of children, thereby reducing the false positive rate of the system.
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