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An Empirical Study on Sports Combination Training Action Recognition Based on SMO Algorithm Optimization Model and Artificial Intelligence

机译:基于SMO算法优化模型和人工智能的体育组合培训行动识别实证研究

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In order to improve the accuracy of sports combination training action recognition, a sports combination training action recognition model based on SMO algorithm optimization model and artificial intelligence is proposed. In this paper, by expanding the standard action data, the standard database of score comparison is established, and the system architecture and the key acquisition module design based on 3D data are given. In this paper, the background subtraction method is used to process the sports video image to obtain the sports action contour and realize the sports action segmentation and feature extraction, and the artificial intelligence neural network is used to train the feature vector to establish the sports action recognition classifier. This paper mainly uses a three-stream CNN artificial intelligence deep learning framework based on convolutional neural network and uses a soft Vlad representation algorithm based on data decoding to learn the action features. Through the data enhancement of the existing action database, it uses support vector machine to achieve high-precision action classification. The test results show that the model improves the recognition rate of sports action and reduces the error recognition rate, which can meet the online recognition requirements of sports action.
机译:为了提高体育组合训练作用识别的准确性,提出了一种基于SMO算法优化模型和人工智能的体育组合训练作用识别模型。本文通过扩展标准动作数据,建立了分数比较的标准数据库,并给出了基于3D数据的系统架构和密钥采集模块设计。在本文中,使用背景减法方法来处理体育视频图像以获得体育动作轮廓并实现体育动作分割和特征提取,并且人工智能神经网络用于训练特征向量以建立体育活动识别分类器。本文主要使用基于卷积神经网络的三流CNN人工智能深度学习框架,并使用基于数据解码的软VLAD表示算法来学习动作特征。通过现有动作数据库的数据增强,它使用支持向量机来实现高精度动作分类。测试结果表明,该模型提高了体育动作的识别率,降低了误差识别率,这可以满足体育行动的在线识别要求。

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