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Falling and slipping detection for pedestrians using a manifold learning approach

机译:使用多种学习方法为行人跌倒和滑倒进行检测

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Falling activity is a critical behavior due to the physical discomfort for elders. The prime time of rescuing is missed whenever falls accidentally happen. Fall detection in real time could save human life in video surveillance systems. Recently, digital cameras are installed everywhere. Human activities are monitored from cameras by intelligent programs. An alarm is sent to the administrator when an abnormal event occurs. In this paper, a multi-view-based manifold learning algorithm is proposed for detecting the falling events. This algorithm should be able to detect people falling down in any direction. First, the walking patterns in a normal speed are modeled by the locality preserving projection (LPP). Since the duration of falling activity is hard to be estimated from real videos, partial temporal windows are matched with the normal walking patterns. The Hausdorff distances are calculated to estimate the similarity. In the experiments, the falling events are effectively detected by the proposed method.
机译:由于老年人身体不适,跌倒活动是一种关键行为。每当意外跌倒时,都会错过救援的黄金时间。实时跌倒检测可以在视频监控系统中挽救生命。最近,到处都安装有数码相机。人类活动通过智能程序从摄像机进行监控。发生异常事件时,会向管理员发送警报。本文提出了一种基于多视角的流形学习算法来检测跌倒事件。该算法应该能够检测到任何方向跌倒的人。首先,通过局部保留投影(LPP)对正常速度下的行走模式进行建模。由于很难从真实视频中估计跌倒活动的持续时间,因此部分时间窗口与正常的步行模式相匹配。计算Hausdorff距离以估计相似度。在实验中,通过所提出的方法可以有效地检测到跌落事件。

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