Abstract
In the process of calisthenics training, athletes’ movements need to be monitored and analyzed. The traditional monitoring method has the problem of insufficient resolution, which limits the improvement of accuracy and reliability. In this paper, a high dimensional image super resolution model is developed by using infrared spectral imaging technology to improve the monitoring and simulation results in the process of aerobics training. In this paper, infrared spectral imaging technology combined with deep learning algorithm is used to design a high dimensional image super resolution model. Infrared spectral imaging data were collected during aerobics training, and the data were trained and learned to extract features and realize super-resolution reconstruction. Finally, the model is tested and verified to evaluate its monitoring and simulation effect in aerobics training. The experimental results show that the high-dimensional image super resolution model has good monitoring and simulation effects in aerobics training. By increasing the detail and clarity of the image, the model can provide more accurate motion analysis and motion suggestions, so as to help the trainer improve the movement skills and improve the training effect.
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WY has done the first version, MW has done the simulations. All authors have contributed to the paper’s analysis, discussion, writing, and revision.
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Ye, W., Wu, M. High dimensional image super-resolution model based on infrared spectral imaging for aerobics training simulation monitoring. Opt Quant Electron 56, 355 (2024). https://doi.org/10.1007/s11082-023-06010-1
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DOI: https://doi.org/10.1007/s11082-023-06010-1