A Residual Deep Learning Method for Accurate and Efficient Recognition of Gym Exercise Activities Using Electromyography and IMU Sensors

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2024-07-02 DOI:10.3390/asi7040059
S. Mekruksavanich, A. Jitpattanakul
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Abstract

The accurate and efficient recognition of gym workout activities using wearable sensors holds significant implications for assessing fitness levels, tailoring personalized training regimens, and overseeing rehabilitation progress. This study introduces CNN-ResBiGRU, a novel deep learning architecture that amalgamates residual and hybrid methodologies, aiming to precisely categorize gym exercises based on multimodal sensor data. The primary goal of this model is to effectively identify various gym workouts by integrating convolutional neural networks, residual connections, and bidirectional gated recurrent units. Raw electromyography and inertial measurement unit data collected from wearable sensors worn by individuals during strength training and gym sessions serve as inputs for the CNN-ResBiGRU model. Initially, convolutional neural network layers are employed to extract unique features in both temporal and spatial dimensions, capturing localized patterns within the sensor outputs. Subsequently, the extracted features are fed into the ResBiGRU component, leveraging residual connections and bidirectional processing to capture the exercise activities’ long-term temporal dependencies and contextual information. The performance of the proposed model is evaluated using the Myogym dataset, comprising data from 10 participants engaged in 30 distinct gym activities. The model achieves a classification accuracy of 97.29% and an F1-score of 92.68%. Ablation studies confirm the effectiveness of the convolutional neural network and ResBiGRU components. The proposed hybrid model uses wearable multimodal sensor data to accurately and efficiently recognize gym exercise activity.
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利用肌电图和 IMU 传感器准确高效识别健身房锻炼活动的残差深度学习方法
利用可穿戴传感器准确、高效地识别健身房锻炼活动对评估健身水平、定制个性化训练方案和监督康复进展具有重要意义。本研究介绍的 CNN-ResBiGRU 是一种新型深度学习架构,它融合了残差和混合方法,旨在根据多模态传感器数据对健身锻炼进行精确分类。该模型的主要目标是通过整合卷积神经网络、残差连接和双向门控递归单元,有效识别各种健身锻炼。CNN-ResBiGRU 模型的输入数据来自个人在力量训练和健身过程中佩戴的可穿戴传感器收集的原始肌电图和惯性测量单元数据。最初,卷积神经网络层用于提取时间和空间维度的独特特征,捕捉传感器输出中的局部模式。随后,将提取的特征输入 ResBiGRU 组件,利用剩余连接和双向处理捕捉运动活动的长期时间依赖性和上下文信息。我们使用 Myogym 数据集对所提议模型的性能进行了评估,该数据集由 10 名参与者参与 30 种不同健身活动的数据组成。该模型的分类准确率为 97.29%,F1 分数为 92.68%。消融研究证实了卷积神经网络和 ResBiGRU 组件的有效性。所提出的混合模型利用可穿戴的多模态传感器数据准确、高效地识别健身房锻炼活动。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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