Research on aerobics action pose recognition based on deep learning

Baoping Xing, Huan Li, Nathan Chen
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Abstract

Taking aerobics as an example, the human movement can be regarded as a series of posture data that changes over time. Compared with other methods, the special kinematic feature model of human skeleton has great advantages in describing the posture change state. In order to achieve the accurate capture of dynamic posture of aerobics, so as to complete the recognition and analysis of motion posture data in a short time, this paper proposes a 3D human dynamic posture recognition method based on Long Short-Term Memory (LSTM) network. First, the first frame model of the 3D human action sequence is selected as the template of the sequence, and the shape difference of the subsequent models of the action sequence is calculated by the shape difference operator relative to the template, which is represented as a low-dimensional shape difference information tensor. Then, the spatial and temporal dimensional features are extracted from the shape difference information tensor by combining two-dimensional convolutional neural network and LSTM to achieve the recognition of human dynamic posture. The above methods were evaluated by the dynamic pose datasets HumanEva, MoSh, SFU, SSM and Transitions; The classification accuracies were 98.4%, 99.7%, 100%, 99.4% and 100%, respectively.
基于深度学习的健美操动作姿势识别研究
以有氧运动为例,人体的运动可以看作是一系列随时间变化的姿势数据。与其他方法相比,人体骨骼的特殊运动特征模型在描述姿态变化状态方面具有很大的优势。为了实现对有氧运动动态姿态的准确捕捉,从而在短时间内完成对运动姿态数据的识别与分析,本文提出了一种基于长短期记忆(LSTM)网络的三维人体动态姿态识别方法。首先,选取三维人体动作序列的第一帧模型作为序列模板,通过形状差算子相对于模板计算动作序列后续模型的形状差,将其表示为低维形状差信息张量。然后,将二维卷积神经网络与LSTM相结合,从形状差分信息张量中提取时空维度特征,实现人体动态姿态的识别;采用HumanEva、MoSh、SFU、SSM和Transitions动态姿态数据集对上述方法进行了评价;分类准确率分别为98.4%、99.7%、100%、99.4%和100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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