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Design and Implementation of Human Motion Recognition Information Processing System Based on LSTM Recurrent Neural Network Algorithm

机译:基于LSTM经常性神经网络算法的人体运动识别信息处理系统的设计与实现

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With the comprehensive development of national fitness, men, women, young, and old in China have joined the ranks of fitness. In order to increase the understanding of human movement, many researches have designed a lot of software or hardware to realize the analysis of human movement state. However, the recognition efficiency of various systems or platforms is not high, and the reduction ability is poor, so the recognition information processing system based on LSTM recurrent neural network under deep learning is proposed to collect and recognize human motion data. The system realizes the collection, processing, recognition, storage, and display of human motion data by constructing a three-layer human motion recognition information processing system and introduces LSTM recurrent neural network to optimize the recognition efficiency of the system, simplify the recognition process, and reduce the data missing rate caused by dimension reduction. Finally, we use the known dataset to train the model and analyze the performance and application effect of the system through the actual motion state. The final results show that the performance of LSTM recurrent neural network is better than the traditional algorithm, the accuracy can reach 0.980, and the confusion matrix results show that the recognition of human motion by the system can reach 85 points to the greatest extent. The test shows that the system can recognize and process the human movement data well, which has great application significance for future physical education and daily physical exercise.
机译:随着国家健身,男性,女性,年轻人和老年人的综合发展,加入了健身的行为。为了增加对人类运动的理解,许多研究都设计了许多软件或硬件来实现人体运动状态的分析。然而,各种系统或平台的识别效率不高,并且还原能力差,因此提出了基于LSTM经常性神经网络的深度学习的识别信息处理系统来收集和识别人类运动数据。该系统通过构建三层人体运动识别信息处理系统来实现人类运动数据的收集,处理,识别,存储和显示,并引入LSTM经常性神经网络以优化系统的识别效率,简化识别过程,并降低减压引起的数据缺失率。最后,我们使用已知的数据集培训模型并通过实际运动状态分析系统的性能和应用效果。最终结果表明,LSTM复发性神经网络的性能优于传统算法,精度可达0.980,困惑矩阵结果表明,识别系统的人类运动可以在最大程度上达到85点。该测试表明系统可以识别和处理人类运动数据,这对未来的体育和日常体育锻炼具有很大的应用意义。

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