资源论文What Players do with the Ball: A Physically Constrained Interaction Modeling

What Players do with the Ball: A Physically Constrained Interaction Modeling

2019-12-27 | |  75 |   45 |   0

Abstract

Tracking the ball is critical for video-based analysis of team sports. However, it is difficult, especially in lowresolution images, due to the small size of the ball, its speedthat creates motion blur, and its often being occluded by players. In this paper, we propose a generic and principled approach to modeling the interaction between the ball and the players while also imposing appropriate physical constraints on the ball’s trajectory. We show that our approach, formulated in terms of a Mixed Integer Program, is more robust and more accurate than several state-of-the-art approaches on real-life volleyball, basketball, and soccer sequences.

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