论文标题

在篮球视频中融合运动模式和关键视觉信息,以识别语义事件的识别

Fusing Motion Patterns and Key Visual Information for Semantic Event Recognition in Basketball Videos

论文作者

Wu, Lifang, Yang, Zhou, Wang, Qi, Jian, Meng, Zhao, Boxuan, Yan, Junchi, Chen, Chang Wen

论文摘要

团队运动活动中的许多语义活动,例如篮球通常都涉及小组活动和结果(无论是否得分)。运动模式可以是确定不同活动的有效手段。全球和地方动作各自强调不同的活动,由于全球和本地动作的混合,很难从光流中捕获。因此,它要求采用一种更有效的方法来分开全球和本地动作。当涉及篮球比赛分析的具体情况时,可以通过篮子周围的外观变化可靠地检测到每个回合的成功得分。根据观察结果,我们提出了一个计划,以融合全球和本地运动模式(MPS)和关键视觉信息(KVI),以供篮球视频中的语义事件识别。首先,提出了一种算法,以根据相机调整的固有特性估算混合运动的全球运动。当地动作可以从混合和全球动作中获得。其次,在分离的全球运动模式和局部运动模式上使用了两流3D CNN框架进行组活动识别。第三,检测到篮子,并通过CNN结构提取其外观特征。这些功能用于预测成功或失败。最后,使用Kronecker产品集成了小组活动识别和成功/失败预测结果以进行事件识别。 NCAA数据集的实验表明,该提出的方法获得了最新的性能。

Many semantic events in team sport activities e.g. basketball often involve both group activities and the outcome (score or not). Motion patterns can be an effective means to identify different activities. Global and local motions have their respective emphasis on different activities, which are difficult to capture from the optical flow due to the mixture of global and local motions. Hence it calls for a more effective way to separate the global and local motions. When it comes to the specific case for basketball game analysis, the successful score for each round can be reliably detected by the appearance variation around the basket. Based on the observations, we propose a scheme to fuse global and local motion patterns (MPs) and key visual information (KVI) for semantic event recognition in basketball videos. Firstly, an algorithm is proposed to estimate the global motions from the mixed motions based on the intrinsic property of camera adjustments. And the local motions could be obtained from the mixed and global motions. Secondly, a two-stream 3D CNN framework is utilized for group activity recognition over the separated global and local motion patterns. Thirdly, the basket is detected and its appearance features are extracted through a CNN structure. The features are utilized to predict the success or failure. Finally, the group activity recognition and success/failure prediction results are integrated using the kronecker product for event recognition. Experiments on NCAA dataset demonstrate that the proposed method obtains state-of-the-art performance.

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