羽毛球现场战术分析的视频图像信息挖掘算法

Haifu Li
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引用次数: 0

摘要

由于运动视频中镜头角度或运动员工作方向的变化,该方法无法进行有效的区域分析。因此,高效的图像分析对于动作识别至关重要,因此,本文研究了用于羽毛球现场战术分析的视频图像信息挖掘算法。所设计的系统包括图像分割、动作识别和羽毛球现场战术分析。为了进行图像分割,考虑FCM模型。为了进行动作识别,基于获得的骨架数据,通过动作标签数据对模型进行训练,对其进行分类。一个有效的动作表示可以同时捕获静态和运动信息。然后,通过实时数据集对系统进行验证。该模型被证明是有效的。
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Video Image Information Mining Algorithms for Badminton on-the-Spot Tactics Analysis
Due to the changes in the camera angle or the working direction of the athlete in the sports video, this method cannot perform an effective regional analysis. Hence, the efficient analysis of images is essential for the action recognition, hence, this paper studies the video image information mining algorithms for badminton on-the-spot tactics analysis. The designed system contains the image segmentation, action recognition and the badminton on-the-spot tactics analysis. To perform image segmentation, the FCM model is considered To perform action recognition, based on the obtained skeleton data, the model is trained by the action label data to classify it. An efficient action representation can capture both static and kinematic information. Then, the system is verified through the real-time data sets. The proposed model is proven to be efficient.
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