Sport players detection and tracking with a mixed network of planar and omnidirectional cameras

Alexandre Alahi, Y. Boursier, L. Jacques, P. Vandergheynst
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引用次数: 44

Abstract

A generic approach is presented to detect and track people with a network of fixed and omnidirectional cameras given severely degraded foreground silhouettes. The problem is formulated as a sparsity constrained inverse problem. A dictionary made of atoms representing the silhouettes of a person at a given location is used within the problem formulation. A reweighted scheme is considered to better approximate the sparsity prior. Although the framework is generic to any scene, the focus of this paper is to evaluate the performance of the proposed approach on a basketball game. The main challenges come from the players' behavior, their similar appearance, and the mutual occlusions present in the views. In addition, the extracted foreground silhouettes are severely degraded due to the polished floor reflecting the players, and the strong shadow present in the scene. We present qualitative and quantitative results with the APIDIS dataset as part of the ICDSC sport challenge. 1
运动运动员的检测和跟踪与平面和全向摄像机的混合网络
在前景轮廓严重退化的情况下,提出了一种用固定和全向摄像机网络检测和跟踪人的通用方法。该问题被表述为一个稀疏约束逆问题。一个由原子组成的字典,代表一个人在给定位置的轮廓,在问题公式中使用。为了更好地逼近稀疏性先验,考虑了一种重加权方案。尽管该框架适用于任何场景,但本文的重点是评估所提出的方法在篮球比赛中的性能。主要的挑战来自于玩家的行为,他们相似的外观,以及视图中的相互遮挡。此外,由于反射玩家的抛光地板和场景中存在的强烈阴影,提取的前景轮廓严重退化。作为ICDSC运动挑战的一部分,我们使用APIDIS数据集呈现定性和定量结果。1
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