一种基于hmm的鲁棒跌落检测方法

Nicolas Thome, S. Miguet
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引用次数: 49

摘要

视频序列中摔倒者的自动检测是未来无孔不入的家庭监控系统的重要组成部分。我们在这里提出了一种鲁棒方法来实现这一目标。运动建模采用层次隐马尔可夫模型(HHMM),该模型的第一层状态与被跟踪人的方向有关。找到一种一致的方式来稳健地将观察向量与人体姿势联系起来,这是我们贡献的核心。从这个意义上说,我们仔细研究了3D世界中的角度与它们在图像平面上的投影之间的关系。在进行初始图像度量校正后,我们推导出理论特性,使其能够约束由站立姿势的图像形成过程引入的误差角。这使我们能够自信地将其他姿势识别为“非站立”姿势,从而针对给定的运动模型健壮地分析姿势序列。有几个结果证明了该算法的有效性,指出它能够准确识别从另一个行走或坐着的人身上摔倒的人,以及它在未指定配置下运行的能力
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A HHMM-Based Approach for Robust Fall Detection
Automatic detection of a falling person in video sequences is an important part of future pervasive home monitoring systems. We propose here a robust method to achieve this goal. Motion is modeled by a hierarchical hidden Markov model (HHMM) whose first layer states are related to the orientation of the tracked person. Finding a consistent way for robustly linking the observation vector to the human poses is the heart of our contribution. In that sense, we carefully study the relationship between angles in the 3D world and their projection onto the image plane. After performing an initial image metric rectification, we derive theoretical properties making it possible to bound the error angle introduced by the image formation process for a standing posture. This allows us to confidently identify other poses as "non-standing" ones, and thus to robustly analyze pose sequences against a given motion model. Several results illustrate the efficiency of the algorithm by pointing out its ability to accurately recognize a person falling down from another walking or sitting, as well as its capacity to run in an unspecified configuration
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