基于行人的摄像机网络外部自动标定

A. Truong, W. Philips, Junzhi Guan, N. Deligiannis, L. Abrahamyan
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引用次数: 1

摘要

摄像机外部标定对于摄像机网络中的任何计算机视觉任务都是必不可少的。通常,研究人员在场景中放置校准对象来校准摄像机。然而,当在现场安装摄像机时,这种方法可能成本高昂且不切实际,特别是在需要重新校准时。本文提出了一种针对部分重叠摄像机网络的高精度全自动外部标定框架。它是基于对行人轨迹的分析,没有其他标定对象。与现有方法相比,该方法具有全自动、鲁棒性好等优点。我们的方法检测相机图像中的人体姿势,然后将行走的人建模为垂直的棍子。我们提出了一种蛮力方法来确定多相机图像中的行人对应关系。这些信息与行人头部和脚的3D估计位置一起用于计算相机外部矩阵。我们验证了该方法在不同摄像机设置下的鲁棒性,以及对单个行人和多个步行的人的鲁棒性。结果表明,该方法可获得几厘米的三角测量误差。通常,在受控环境中,从行走的人那里收集数据需要40秒才能达到这种精度,在非受控环境中需要几分钟。并自动两两连接摄像机坐标系,计算相对外部参数。我们提出的方法可以在各种情况下表现良好,例如多人,闭塞,甚至在街道上的真实十字路口。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Extrinsic Calibration of Camera Networks Based on Pedestrians
Extrinsic camera calibration is essential for any computer vision tasks in a camera network. Usually, researchers place calibration objects in the scene to calibrate the cameras. However, when installing cameras in the field, this approach can be costly and impractical, especially when recalibration is needed. This paper proposes a novel accurate and fully automatic extrinsic calibration framework for camera networks with partially overlapping views. It is based on the analysis of pedestrian tracks without other calibration objects. Compared to the state of the art, the new method is fully automatic and robust. Our method detects human poses in the camera images and then models walking persons as vertical sticks. We propose a brute-force method to determine the pedestrian correspondences in multiple camera images. This information along with 3D estimated locations of the head and feet of the pedestrians are then used to compute the camera extrinsic matrices. We verified the robustness of the method in different camera setups and for both single pedestrian and multiple walking people. The results show that the proposed method can obtain the triangulation error of a few centimeters. Typically, it requires 40 seconds of collecting data from walking people to reach this accuracy in controlled environments and a few minutes for uncontrolled environments. As well as compute relative extrinsic parameters connecting the coordinate systems of cameras in a pairwise fashion automatically. Our proposed method could perform well in various situations such as multi-person, occlusions, or even at real intersections on the street.
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