Human Table Tennis Actions Recognition and Evaluation Method Based on Skeleton Extraction

Wuzhe Huang, Jingjing Yang, Hongde Luo, Heng Zhang
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Abstract

With the rise of computer vision, it is becoming more and more important to accurately recognize and evaluate human actions. However, the complexity, intraclass differences, and viewing angle changes of human actions significantly impact the accuracy of identification human actions. This paper proposed an action recognition and evaluation method based on skeleton information extraction. Briefly, We use Lightweight OpenPose to extract the key points of human skeleton and perform processing work, including video data cutting, deleting some key points, supplementing missing key points, filtering processing, feature extraction, etc. Through an in-depth exploration of related theoretical technologies, we proposed a model for recognition and evaluation of human table tennis actions with an ordinary camera. The support vector machine algorithm (SVM) classification model is used to identify table tennis actions in real-time. Then the dynamic time regularization (DTW) algorithm calculates the similarity of each human skeleton key point in the action sequence. The low-scoring bone key points are marked to evaluate the human table tennis action in real time. The results show that a recognition rate of more than 95% is achieved in the test set, which proves the method's effectiveness. In addition, we compared the results with previous work using inertial sensors for action recognition, which shows our method can preserve the same accuracy with a much lower cost of implementation.
基于骨骼提取的人体乒乓球动作识别与评价方法
随着计算机视觉的兴起,准确识别和评价人类行为变得越来越重要。然而,人类行为的复杂性、类内差异和视角变化显著影响了人类行为识别的准确性。提出了一种基于骨架信息提取的动作识别与评价方法。简单地说,我们使用轻量级的OpenPose来提取人体骨骼的关键点,并进行处理工作,包括视频数据的剪切,删除一些关键点,补充缺失的关键点,滤波处理,特征提取等。通过对相关理论技术的深入探索,我们提出了一种普通摄像机对人类乒乓球动作的识别与评价模型。采用支持向量机(SVM)分类模型实时识别乒乓球动作。然后,动态时间正则化算法计算动作序列中每个人体骨架关键点的相似度。对得分较低的骨关键点进行标记,实时评价人体乒乓球动作。结果表明,该方法在测试集上的识别率达到95%以上,证明了该方法的有效性。此外,我们将结果与先前使用惯性传感器进行动作识别的工作进行了比较,结果表明我们的方法可以在更低的实现成本下保持相同的精度。
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