Abstract
AbstractIntelligent detection of athlete behavior is beneficial for guiding sports instruction. Existing mature target detection algorithms provide significant support for this task. However, large-scale target detection algorithms often encounter more challenges in practical application scenarios. We propose SCB-YOLOv5, to detect standardized movements of gymnasts. First, the movements of aerobics athletes were captured, labeled using the labelImg software, and utilized to establish the athlete normative behavior dataset, which was then enhanced by the dataset augmentation using Mosaic9. Then, we improved the YOLOv5 by (1) incorporating the structures of ShuffleNet V2 and convolutional block attention module to reconstruct the Backbone, effectively reducing the parameter size while maintaining network feature extraction capability; (2) adding a weighted bidirectional feature pyramid network into the multiscale feature fusion, to acquire precise channel and positional information through the global receptive field of feature maps. Finally, SCB-YOLOv5 was lighter by 56.9% than YOLOv5. The detection precision is 93.7%, with a recall of 99% and mAP value of 94.23%. This represents a 3.53% improvement compared to the original algorithm. Extensive experiments have verified that our method. SCB-YOLOv5 can meet the requirements for on-site athlete action detection. Our code and models are available at https://github.com/qingDu1/SCB-YOLOv5.
Publisher
Springer Science and Business Media LLC
Reference30 articles.
1. Al-Emran, M., Malik, S. I. & Al-Kabi, M. N. A survey of Internet of Things (IoT) in education: Opportunities and challenges. In Toward Social Internet of Things (SIoT): Enabling Technologies, Architectures and Applications (eds Hassanien, A. E. et al.) 197–209 (Springer, Cham, 2020).
2. Li, G. & Zhang, C. Automatic detection technology of sports athletes based on image recognition technology. EURASIP J. Image Video Process. 2019, 1–9 (2019).
3. Ghosh, P., Song, J., Aksan, E., Hilliges, O. Learning human motion models for long-term predictions. In Proceedings of International Conference on 3D Vision, 458–466 (IEEE, 2017).
4. Levallet, N. et al. Enhancing the fan experience at live sporting events: The case of stadium Wi-Fi. Case Stud. Sport Manag. 8(1), 6–12 (2019).
5. Chen, D. D. Image recognition of sports athletes’ high-intensity sports injuries based on binocular stereo vision. Comput. Intell. Neurosci 2022, 4322597–4322597 (2022).