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Fall detection in indoor environment with kinect sensor

机译:使用kinect传感器检测室内环境中的跌倒

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摘要

Falls are one of the major risks of injury for elderly living alone at home. Computer vision-based systems offer a new, low-cost and promising solution for fall detection. This paper presents a new fall-detection tool, based on a commercial RGB-D camera. The proposed system is capable of accurately detecting several types of falls, performing a real time algorithm in order to determine whether a fall has occurred. The proposed approach is based on evaluating the contraction and the expansion speed of the width, height and depth of the 3D human bounding box, as well as its position in the space. Our solution requires no pre-knowledge of the scene (i.e. the recognition of the floor in the virtual environment) with the only constraint about the knowledge of the RGB-D camera position in the room. Moreover, the proposed approach is able to avoid false positive as: sitting, lying down, retrieve something from the floor. Experimental results qualitatively and quantitatively show the quality of the proposed approach in terms of both robustness and background and speed independence.
机译:跌落是独自在家中老年人受伤的主要风险之一。基于计算机视觉的系统为跌倒检测提供了一种新的,低成本且有希望的解决方案。本文介绍了一种基于商用RGB-D相机的新型跌倒检测工具。所提出的系统能够准确地检测多种跌倒类型,执行实时算法以确定是否已经发生跌倒。所提出的方法基于评估3D人体包围盒的宽度,高度和深度的收缩和扩展速度,以及其在空间中的位置。我们的解决方案不需要预先了解场景(即在虚拟环境中识别地板),而仅需了解房间中RGB-D摄像机位置的知识即可。而且,所提出的方法能够避免误报,例如:坐下,躺下,从地板上取回东西。实验结果从鲁棒性,背景和速度独立性两个方面定性和定量地表明了该方法的质量。

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