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Human fall detection in videos via boosting and fusing statistical features of appearance, shape and motion dynamics on Riemannian manifolds with applications to assisted living

机译:通过增强和融合黎曼流形上的外观,形状和运动动力学的统计特征并将其融合到辅助生活中来检测视频中的人跌倒

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摘要

This paper addresses issues in fall detection from videos. It is commonly observed that a falling person undergoes large appearance change, shape deformation and physical displacement, thus the focus here is on the analysis of these dynamic features that vary drastically in camera views while a person falls onto the ground. A novel approach is proposed that performs such analysis on Riemannian manifolds, detecting falls from a single camera with arbitrary view angles. The main novelties of this paper include: (a) representing the dynamic appearance, shape and motion of a target person each being points moving on a different Riemannian manifold; (b) characterizing the dynamics of different features by computing velocity statistics of their corresponding manifold points, based on geodesic distances; (c) employing a feature weighting approach, where each statistical feature is weighted according to the mutual information; (d) fusing statistical features learned from different manifolds with a two-stage ensemble learning strategy under a boosting framework. Experiments have been conducted on two video datasets for fall detection. Tests, evaluations and comparisons with 6 state-of-the-art methods have provided support to the effectiveness of the proposed method.
机译:本文介绍了从视频中跌倒检测的问题。通常观察到,跌倒的人会经历较大的外观变化,形状变形和物理位移,因此,这里的重点是分析当人跌倒在地面上时,这些动态特征在相机视图中会发生巨大变化。提出了一种新颖的方法,该方法对黎曼流形进行此类分析,以任意视角检测单个摄像机的跌落。本文的主要新颖之处包括:(a)表示目标人物的动态外观,形状和动作,每个人物都是在不同的黎曼流形上移动的点; (b)通过基于测地距离计算相应特征点的速度统计来表征不同特征的动力学; (c)采用特征加权法,其中根据相互信息对每个统计特征进行加权; (d)在加强框架下,将从不同流形学到的统计特征与两阶段整体学习策略融合在一起。已经对两个视频数据集进行了跌倒检测实验。通过6种最新方法进行的测试,评估和比较,为所提出方法的有效性提供了支持。

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