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Detection Human Motion with Heel Strikes for Surveillance Analysis

机译:通过脚跟打击检测人体运动以进行监视分析

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Heel strike detection is an important cue for human gait recognition and detection in visual surveillance since the heel strike position can be used to derive the gait periodicity, stride and step length. We propose a novel method for heel strike detection using a gait trajectory model, which is robust to occlusion, camera view and to low resolution which can generalize to a variety of surveillance imagery. When a person walks, the movement of the head is conspicuous and sinusoidal. The highest point of the trajectory of the head occurs when the feet cross. Our gait trajectory model is constructed from trajectory data using non-linear optimization. Then, the key frames in which the heel strike takes place are extracted. A Region Of Interest (ROI) is extracted using the silhouette image of the key frame as a filter. Finally, gradient descent is applied to detect maxima which are considered to be the time of the heel strikes. The experimental results show a detection rate of 95% on two databases. The contribution of this research is the first use of the gait trajectory in the heel strike position estimation process and we contend that the approach is a new approach for basic analysis in surveillance imagery.
机译:脚跟撞击检测是在视觉监视中进行人的步态识别和检测的重要提示,因为脚跟撞击位置可用于得出步态的周期性,步幅和步长。我们提出了一种使用步态轨迹模型进行脚跟罢工检测的新方法,该方法对于遮挡,相机视角和低分辨率具有鲁棒性,可以推广到各种监视图像。当一个人走路时,头部的运动是明显且正弦的。当双脚交叉时,会出现头部轨迹的最高点。我们的步态轨迹模型是使用非线性优化从轨迹数据构建的。然后,提取发生后跟撞击的关键帧。使用关键帧的轮廓图像作为过滤器提取感兴趣区域(ROI)。最后,应用梯度下降来检测最大值,该最大值被认为是脚跟撞击的时间。实验结果表明,在两个数据库上的检出率为95%。这项研究的贡献是步态轨迹在脚跟打击位置估计过程中的首次使用,我们认为该方法是监视图像中基础分析的一种新方法。

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