A Robust and Efficient Framework for Sports-Field Registration

Xiaohan Nie, Shixing Chen, Raffay Hamid
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引用次数: 19

Abstract

We propose a novel framework to register sports-fields as they appear in broadcast sports videos. Unlike previous approaches, we particularly address the challenge of field- registration when: (a) there are not enough distinguishable features on the field, and (b) no prior knowledge is available about the camera. To this end, we detect a grid of key- points distributed uniformly on the entire field instead of using only sparse local corners and line intersections, thereby extending the keypoint coverage to the texture-less parts of the field as well. To further improve keypoint based homography estimate, we differentialbly warp and align it with a set of dense field-features defined as normalized distance- map of pixels to their nearest lines and key-regions. We predict the keypoints and dense field-features simultaneously using a multi-task deep network to achieve computational efficiency. To have a comprehensive evaluation, we have compiled a new dataset called SportsFields which is collected from 192 video-clips from 5 different sports covering large environmental and camera variations. We empirically demonstrate that our algorithm not only achieves state of the art field-registration accuracy but also runs in real-time for HD resolution videos using commodity hardware.
一个健壮而高效的运动场注册框架
我们提出了一个新的框架来登记运动场地,因为他们出现在广播体育视频。与以前的方法不同,我们特别解决了现场注册的挑战,当:(a)现场没有足够的可区分特征,(b)没有关于相机的先验知识。为此,我们检测了均匀分布在整个领域的关键点网格,而不是仅使用稀疏的局部角落和线相交,从而将关键点覆盖范围扩展到领域的无纹理部分。为了进一步改进基于关键点的单应性估计,我们将其与一组定义为像素到其最近的线和关键区域的归一化距离映射的密集场特征进行微分扭曲和对齐。我们使用多任务深度网络同时预测关键点和密集场特征,以提高计算效率。为了进行全面的评估,我们编制了一个名为SportsFields的新数据集,该数据集收集了来自5种不同运动的192个视频片段,涵盖了大的环境和摄像机变化。我们通过经验证明,我们的算法不仅达到了最先进的现场配准精度,而且还可以实时运行使用商用硬件的高清分辨率视频。
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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