An active vision system for fall detection and posture recognition in elderly healthcare

G. Diraco, A. Leone, P. Siciliano
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引用次数: 137

Abstract

The paper presents an active vision system for the automatic detection of falls and the recognition of several postures for elderly homecare applications. A wall-mounted Time-Of-Flight camera provides accurate measurements of the acquired scene in all illumination conditions, allowing the reliable detection of critical events. Preliminarily, an off-line calibration procedure estimates the external camera parameters automatically without landmarks, calibration patterns or user intervention. The calibration procedure searches for different planes in the scene selecting the one that accomplishes the floor plane constraints. Subsequently, the moving regions are detected in real-time by applying a Bayesian segmentation to the whole 3D points cloud. The distance of the 3D human centroid from the floor plane is evaluated by using the previously defined calibration parameters and the corresponding trend is used as feature in a thresholding-based clustering for fall detection. The fall detection shows high performances in terms of efficiency and reliability on a large real dataset in which almost one half of events are falls acquired in different conditions. The posture recognition is carried out by using both the 3D human centroid distance from the floor plane and the orientation of the body spine estimated by applying a topological approach to the range images. Experimental results on synthetic data validate the correctness of the proposed posture recognition approach.
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一种用于老年人跌倒检测和姿势识别的主动视觉系统
本文提出了一种用于老年人家庭护理中跌倒自动检测和几种姿势识别的主动视觉系统。壁挂式飞行时间(Time-Of-Flight)相机可在所有照明条件下对采集的场景进行精确测量,从而可靠地检测关键事件。初步,离线校准程序自动估计外部相机参数,不需要地标,校准模式或用户干预。标定过程在场景中搜索不同的平面,选择完成地板平面约束的平面。随后,通过对整个三维点云进行贝叶斯分割,实时检测运动区域。利用预先定义的校准参数评估三维人体质心与地板平面的距离,并将相应的趋势作为特征在基于阈值的聚类中进行跌倒检测。在一个大型真实数据集上,几乎有一半的事件是在不同条件下获得的跌倒,在效率和可靠性方面显示出很高的性能。该方法利用三维人体质心到地面的距离和通过对距离图像应用拓扑方法估计的人体脊柱方向来进行姿态识别。综合数据的实验结果验证了所提姿态识别方法的正确性。
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