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Intelligent video analysis: A Pedestrian trajectory extraction method for the whole indoor space without blind areas

机译:智能视频分析:没有盲区整个室内空间的行人轨迹提取方法

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摘要

Pedestrian trajectory extraction is an important part of intelligent monitoring, which is of great significance to many fields such as statistics on pedestrian flow and density, population behavior analysis, abnormal behavior detection, etc. However, it is quite challenging to extract pedestrian trajectory without blind areas in the whole space due to the limited view angle of ordinary cameras. So far, no efficient method has been proposed to deal with this problem. In this paper, we propose a pedestrian trajectory extraction method based on a single fisheye camera, which can realize no blind areas pedestrian trajectory extraction in the whole interior space. First, the fisheye camera with a perspective of 180 degrees is adopted in our work which can realize the entire space monitoring without blind areas and avoid object matching among multiple cameras. Then, the deep convolutional neural network, the Kalman Filter algorithm, and the Hungarian algorithm are combined for pedestrian head detection and tracking. In order to calculate the coordinates of the trajectory points according to the obtained head position, we propose a novel pedestrian height estimation method for fisheye cameras. Finally, the pedestrian trajectory points are calculated based on the detected head position and the estimated height. The performance of the proposed pedestrian trajectory extraction method has been evaluated by a variety of experiments. The experimental results show that the trajectories of multiple pedestrians can be extracted simultaneously through the method proposed in this paper, and the average error of the trajectory points is less than 5.07 pixels in the 512x512 images.
机译:行人轨迹提取是智能监测的重要组成部分,对人口流动和密度的统计数据等许多领域具有重要意义,人口行为分析,异常行为检测等。然而,在没有盲目的情况下提取人行道轨迹是非常具有挑战性的由于普通相机的有限视角,整个空间的区域。到目前为止,已经提出了没有有效的方法来处理这个问题。在本文中,我们提出了一种基于单个Fisheye摄像头的行人轨迹提取方法,这可以在整个内部空间中没有实现盲区行人轨迹提取。首先,在我们的工作中采用了一种具有180度的视角的鱼眼相机,可以实现无盲区的整个空间监测,并避免在多个摄像机之间匹配。然后,深卷积神经网络,卡尔曼滤波算法和匈牙利算法组合用于行人头检测和跟踪。为了根据所获得的头部位置计算轨迹点的坐标,我们提出了一种用于鱼眼相机的新型行人高度估计方法。最后,基于检测到的头位置和估计高度计算行人轨迹点。所提出的行人轨迹提取方法的性能得到了各种实验评估。实验结果表明,通过本文提出的方法可以同时提取多行人的轨迹,并且轨迹点的平均误差小于512x512图像中的5.07像素。

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