A Fast and Effective Framework for Camera Calibration in Sport Videos

Neng Zhang, E. Izquierdo
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Abstract

Computing the relative homography between the sports field template and the corresponding field in a video frame is an important task in camera calibration. In this paper, a fast and effective framework is proposed for addressing this task. The proposed framework has three processing modules. First, a semantic segmentation network is presented to obtain the segmented video frames. Second, a regression network is developed and combined with the direct linear transformation (DLT) algorithm to compute the homography. Third, the enhanced correlation coefficient (ECC) technique is leveraged to refine the estimated homography. The proposed framework is evaluated on 2014 World Cup dataset. The experimental results are compared to the state-of-the-art approaches. The experimental results demonstrate that the accuracy in the proposed framework is superior and the computation speed is competitive.
一种快速有效的运动视频摄像机标定框架
计算视频帧中运动场模板与相应场之间的相对单应性是摄像机标定中的一项重要任务。本文提出了一个快速有效的框架来解决这一问题。提出的框架有三个处理模块。首先,提出了一种语义分割网络来获取分割后的视频帧。其次,建立了一个回归网络,并结合直接线性变换(DLT)算法来计算单应性。第三,利用增强相关系数(ECC)技术来改进估计的单应性。在2014年世界杯数据集上对提出的框架进行了评估。实验结果与最先进的方法进行了比较。实验结果表明,该框架具有较好的精度和较好的计算速度。
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