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Analysis of Body Behavior Characteristics after Sports Training Based on Convolution Neural Network

机译:基于卷积神经网络的体育训练后体育特征分析

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The use of artificial intelligence technology to analyze human behavior is one of the key research topics in the world. In order to detect and analyze the characteristics of human body behavior after training, a detection model combined with a convolutional neural network (CNN) is proposed. Firstly, the human skeleton suggestion model is established to analyze the driving mode of the human body in motion. Secondly, the number of layers and neurons in CNN are set according to the skeleton feature map. Then, the output information is classified according to the fatigue degree according to the body state after exercise. Finally, the training and performance test of the model are carried out, and the effect of the body behavior feature detection model in use is analyzed. The results show that the CNN designed in the study shows high accuracy and low loss rate in training and testing and also has high accuracy in the practical application of fatigue degree recognition after human training. According to the subjective evaluation of volunteers, the overall average evaluation is more than 9 points. The above results show that the designed convolution neural network-based detection model of body behavior characteristics after training has good performance and is feasible and practical, which has guiding significance for the design of sports training and training schemes.
机译:使用人工智能技术来分析人类行为是世界的关键研究主题之一。为了检测和分析训练后人体行为的特征,提出了与卷积神经网络(CNN)结合的检测模型。首先,建立人骨架建议模型,以分析人体运动中的驱动模式。其次,根据骨架特征图设置CNN中的层数和神经元数。然后,输出信息根据运动后的身体状态根据疲劳程度进行分类。最后,进行了模型的训练和性能测试,分析了使用中使用的身体行为特征检测模型的效果。结果表明,该研究中设计的CNN在训练和测试中显示出高精度和低损耗,并且在人类训练后的疲劳度识别的实际应用中也具有高精度。根据志愿者的主观评价,整体平均评价超过9分。上述结果表明,设计卷积神经网络的车身行为特征检测模型训练后具有良好的性能,是可行实用的,具有指导体育培训和培训方案的重要性。

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