An Approach to Temporal Phase Classification on Videos of the Volleyball's Basic Reception Technique

Jose G. Garcia, Elizabeth R. Villota, C. B. Castañón
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Abstract

In this paper we provide an approach on sports analysis using Deep learning techniques. As part of a current project, the volleyball's basic reception technique has been divided into temporal phases. We performed an evaluation over our own labelled dataset consisting in 14814 frames from 69 videos depicting the desired reception technique. A model based on the YOLO algorithm was trained to locate the player region and trim the frames. Two time fusion methods over the frames wereproposed and evaluated with CNN models which were created based on the ResNet models and a transfer learning approach was used to train them. The results show that these models were able of classifying the frames with their corresponding phase with an accuracy of 92.21% in our best model. Also it can be seen that the RGB merging method shown in this paper helps to slightly improve the performance of the models. Furthermore, the models were capable of learning the temporality of the phases as the mistakes done by the models occurred between consecutive phases.
排球基本接球技术视频的时间相位分类方法
在本文中,我们提供了一种使用深度学习技术进行体育分析的方法。作为当前项目的一部分,排球的基本接收技术被划分为时间阶段。我们对我们自己的标记数据集进行了评估,该数据集由来自69个视频的14814帧组成,描绘了所需的接收技术。训练基于YOLO算法的模型来定位球员区域和裁剪帧。提出了两种帧间的时间融合方法,并使用基于ResNet模型的CNN模型进行了评估,并使用迁移学习方法对其进行了训练。结果表明,这些模型能够对帧进行相应相位的分类,在我们的最佳模型中,准确率达到92.21%。同时可以看出,本文提出的RGB合并方法有助于略微提高模型的性能。此外,由于模型所犯的错误发生在连续的阶段之间,模型能够学习阶段的时间性。
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