基于多传感器信息融合的瑜伽训练损伤检测方法

IF 0.9 Q4 TELECOMMUNICATIONS Internet Technology Letters Pub Date : 2023-05-09 DOI:10.1002/itl2.435
Juan Liu, Yuanqing Li
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引用次数: 0

摘要

瑜伽作为一种健身运动,一直深受人们的喜爱。然而,由于长期不正确的姿势和错误的锻炼方法,很多人在瑜伽训练中受伤。因此,人们迫切需要一种技术来帮助人们检测和改进瑜伽训练方法。本文在以往计算机辅助方法的基础上,从新的思路出发,采用多传感器信息融合的方法来检测瑜伽训练,旨在帮助大众更好地参与瑜伽训练。本研究邀请了 50 名志愿者参与对比实验。在多传感器信息融合的基础上,通过建立人体模型,对比瑜伽训练前后的拉伸和压缩数据,分析计算前后的差异。结论是传感器越多,信息融合度越高,瑜伽训练损伤指数越低。在没有采用多传感器信息融合技术的初期阶段,瑜伽训练的损伤指数为 0.39。随着传感器数量的增加,瑜伽训练的损伤指数逐渐下降到 0.02,比之前的方法降低了 5 个百分点以上。实验表明,基于多传感器信息融合的瑜伽训练损伤检测方法是可行的,这也为瑜伽训练损伤检测方法的研究提供了新的思路。
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Yoga training injury detection method based on multi-sensor information fusion

Yoga, as a kind of body building exercise, has always been loved by people. However, many people suffer from yoga training injuries due to long-term incorrect posture and wrong exercise methods. There is an urgent need for a technology to help people detect and improve yoga training methods. Based on the past computer assistance method, this paper started from a new idea, and adopted the method of multi-sensor information fusion to detect yoga training, aiming to help the masses better participate in yoga training. In this study, 50 volunteers were invited to participate in the comparative experiment. Based on multi-sensor information fusion, and by building a human model, the tension and compression data before and after yoga training were compared to analyze the differences before and after calculation. It was concluded that the more sensors, the higher the degree of information fusion, and the lower the yoga training injury index. The injury index of yoga training without multi-sensor information fusion technology in the early stage was 0.39. With the increase of the number of sensors, the injury index of yoga training has gradually decreased to 0.02, which was more than 5 percentage points lower than that of the previous methods. The experiment showed that the method of yoga training damage detection based on multi-sensor information fusion was feasible, which also provided a new idea for the research of yoga training injury detection methods.

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