Recognition to weightlifting postures using convolutional neural networks with evaluation mechanism

Quantao He, Wenjuan Li, Wenquan Tang, Baoguan Xu
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Abstract

For modern sport training, critical posture recognition of athletes can be helpful for athlete training. This paper proposes convolutional neural networks using a two-stage evaluation mechanism to recognize four critical postures of a weightlifter, that is, force releasing, knee flexion, knee extension and highest point. Using the proposed convolutional neural networks classify images and extract image features. Meanwhile, a two-stage evaluation mechanism is adopted to calculate the scores of image features, based on the calculated scores, the four critical postures can be accurately recognized. Experimental results show that the accuracy of our method is 92.85% in the recognition of the four critical postures, which defeats the competitive methods in critical posture recognition. Moreover, the training time of the proposed method linearly augments along with the increasing of data volume, that is, non-exponential growth, consequently, our method can be applied to large-scale image datasets. We demonstrate that the two-stage mechanism can calculate the scores of image features independently of specific scenarios, which assist neural networks improve classification capabilities. Moreover, using the two-stage mechanism can simplify the designed complexity of neural network architectures, thus reducing the training parameter of neural networks in the process of critical posture recognition.
利用带有评估机制的卷积神经网络识别举重姿势
在现代体育训练中,对运动员关键姿势的识别有助于运动员的训练。本文提出的卷积神经网络采用两阶段评估机制来识别举重运动员的四个关键姿势,即发力、屈膝、伸膝和最高点。利用所提出的卷积神经网络对图像进行分类并提取图像特征。同时,采用两阶段评价机制计算图像特征得分,根据计算的得分准确识别四种关键姿势。实验结果表明,我们的方法对四种关键姿势的识别准确率为 92.85%,击败了关键姿势识别领域的竞争方法。此外,所提方法的训练时间随着数据量的增加而线性增长,即非指数增长,因此我们的方法可以应用于大规模图像数据集。我们证明,两阶段机制可以独立于特定场景计算图像特征得分,从而帮助神经网络提高分类能力。此外,使用两阶段机制可以简化神经网络架构的设计复杂度,从而降低神经网络在关键姿势识别过程中的训练参数。
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