AI-Driven Smart Sportswear for Real-Time Fitness Monitoring Using Textile Strain Sensors
AI-Driven Smart Sportswear for Real-Time Fitness Monitoring Using Textile Strain Sensors
Wearable biosensors have revolutionized human performance monitoring by enabling real-time assessment of physiological and biomechanical parameters. However, existing solutions lack the ability to simultaneously capture breath-force coordination and muscle activation symmetry in a seamless and non-invasive manner, limiting their applicability in strength training and rehabilitation. This work presents a wearable smart sportswear system that integrates screen-printed graphene-based strain sensors with a wireless deep learning framework for real-time classification of exercise execution quality. By leveraging 1D ResNet-18 for feature extraction, the system achieves 92.3% classification accuracy across six exercise conditions, distinguishing between breathing irregularities and asymmetric muscle exertion. Additionally, t-SNE analysis and Grad-CAM-based explainability visualization confirm that the network accurately captures biomechanically relevant features, ensuring robust interpretability. The proposed system establishes a foundation for next-generation AI-powered sportswear, with applications in fitness optimization, injury prevention, and adaptive rehabilitation training.
Chenyu Tang、Wentian Yi、Zibo Zhang、Edoardo Occhipinti、Luigi G. Occhipinti
体育计算技术、计算机技术自动化技术、自动化技术设备
Chenyu Tang,Wentian Yi,Zibo Zhang,Edoardo Occhipinti,Luigi G. Occhipinti.AI-Driven Smart Sportswear for Real-Time Fitness Monitoring Using Textile Strain Sensors[EB/OL].(2025-04-11)[2025-04-28].https://arxiv.org/abs/2504.08500.点此复制
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