家中跌倒风险评估的人类活动分析

Daniele Liciotti, G. Massi, E. Frontoni, A. Mancini, P. Zingaretti
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引用次数: 14

摘要

这项工作的目的是为室内环境定义一个基于RGB-D传感器和低功耗低成本嵌入式系统的跌倒检测视频系统,该系统处理传感器数据,以便在环境辅助生活领域提供人类活动的描述。RGB图像具有较高的发光敏感性,因此深度数据旨在提高人体活动的识别能力。该系统可用于足够小的房间,它需要一个位于天花板中心的RGB-D传感器和一个连接在计算机网络上的嵌入式系统。嵌入式系统控制RGB-D传感器,同时使用基于深度图的计算机视觉算法对图像进行分类。对人的检测采用“注水”算法或“多级分割”算法。对于每个人,系统检测相对于房间的位置,同时估计人的姿势。在提取的特征中,我们列举了身高、头部大小和头部与肩膀之间的距离。系统从第一次识别开始通过帧跟踪一个人。此外,还对群体互动进行监测和分析。姿态检测算法考虑了人的头部与地面之间的距离。在许多家庭场景中进行的实验阶段,所提出的解决方案的有效性得到了证明,该方案快速、准确,能够提供家庭跌倒风险评估中的跌倒地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity analysis for in-home fall risk assessment
The aim of this work is to define a fall detection video system for indoor environments based on a RGB-D sensor and a low power and low cost embedded system that processes the sensor data in order to provide a description of human activities in the field of the Ambient Assisted Living. The RGB image is affected by a high luminescence sensibility, so the depth data have the aim to improve the human activity recognition. The system is usable in a sufficiently small room and it requires a RGB-D sensor located in the center of the ceiling and an embedded system connected on a computer network. The embedded system controls the RGB-D sensor and, in the mean time, classifies the images using computer vision algorithms based on the depth map. “Water Filling” algorithm or “Multi-Level Segmentation” algorithm are used to detect person. For each person, the system detects the position with respect to the room, estimating also the human posture. Among the features extracted we enumerate the height, the head size and the distance between the head and the shoulders. The system tracks a person through the frames starting from the first identification. Further, group interactions are monitored and analyzed. The posture detection algorithm takes into account the distance between the person head and the floor during the time. During the experimental phase, conducted in many domestic scenarios, the effectiveness of the proposed solution has been proved, that is fast, accurate and ables to provide a fall map in-home fall risk assessment.
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