Multi-Camera Extrinsic Calibration for Real-Time Tracking in Large Outdoor Environments

P. Tripicchio, Salvatore D’Avella, Gerardo Jesus Camacho-Gonzalez, Lorenzo Landolfi, Gabriele Baris, C. Avizzano, Alessandro Filippeschi
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引用次数: 1

Abstract

Calibrating intrinsic and extrinsic camera parameters is a fundamental problem that is a preliminary task for a wide variety of applications, from robotics to computer vision to surveillance and industrial tasks. With the advent of Internet of Things (IoT) technology and edge computing capabilities, the ability to track motion activities in large outdoor areas has become feasible. The proposed work presents a network of IoT camera nodes and a dissertation on two possible approaches for automatically estimating their poses. One approach follows the Structure from Motion (SfM) pipeline, while the other is marker-based. Both methods exploit the correspondence of features detected by cameras on synchronized frames. A preliminary indoor experiment was conducted to assess the performance of the two methods compared to ground truth measurements, employing a commercial tracking system of millimetric precision. Outdoor experiments directly compared the two approaches on a larger setup. The results show that the proposed SfM pipeline more accurately estimates the pose of the cameras. In addition, in the indoor setup, the same methods were used for a tracking application to show a practical use case.
大型室外环境下多摄像机外部标定的实时跟踪
校准相机的内在和外在参数是一个基本问题,从机器人到计算机视觉到监控和工业任务,这是各种应用的初步任务。随着物联网(IoT)技术和边缘计算能力的出现,在大型户外区域跟踪运动活动的能力已经变得可行。提出的工作提出了一个物联网相机节点网络和一篇关于自动估计其姿态的两种可能方法的论文。一种方法遵循运动结构(SfM)管道,而另一种方法是基于标记的。这两种方法都利用了摄像机在同步帧上检测到的特征之间的对应关系。采用毫米级精度的商业跟踪系统,进行了初步的室内实验,以评估与地面真值测量相比这两种方法的性能。室外实验直接比较了两种方法在更大的设置。结果表明,该方法能更准确地估计相机的姿态。此外,在室内设置中,跟踪应用程序使用了相同的方法来展示实际用例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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