结合3D数据和领域知识的网球实时跟踪

V. Renó, N. Mosca, M. Nitti, C. Guaragnella, T. D’orazio, E. Stella
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引用次数: 11

摘要

随着计算机视觉的应用从传统的视频监控领域的态势分析和场景理解扩展到其他领域,计算机视觉在许多研究领域的重要性正在稳步提高。体育环境可以为许多机器视觉算法提供一个完美的试验台,因为在相对较多的球场上,广泛分布的摄像机带来了大量的视觉数据。本文介绍了一种利用领域知识有效识别网球位置和轨迹的网球检测与跟踪方法。这种方法的一个特点是,它从一个稀疏但混乱的点云开始,随着时间的推移,基本上只在3D样本上工作。实际数据实验证明了该算法在跟踪精度和路径跟踪能力方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time tracking of a tennis ball by combining 3D data and domain knowledge
Computer vision is steadily gaining importance in many research fields, as its applications expand from traditional fields situation analysis and scene understanding in video surveillance to other scenarios. The sportive context can represent a perfect test-bed for many machine vision algorithms because of the large availability of visual data brought by wide spread cameras on a relatively high number of courts. In this paper we introduce a tennis ball detection and tracking method that exploits domain knowledge to effectively recognize ball positions and trajectories. A peculiarity of this approach is that it starts from a sparse but cluttered point cloud that evolves over time, basically working on 3D samples only. Experiments on real data demonstrate the effectiveness of the algorithm in terms of tracking accuracy and path following capability.
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