Muscle-Mind: towards the Strength Training Monitoring via the Neuro-Muscular Connection Sensing

Aslan B. Wong, Dongliang Tu, Ziqi Huang, Xia Chen, Lu Wang, Kaishun Wu
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Abstract

Strength training is essential for both physical and mental well-being. Muscular mass and strength gain can help with weight loss, balance improvement, and fall prevention. The neuromuscular connection, or mind-muscle connection, is critical for improving strength training performance. However, many fitness trackers and applications are missing a feature that allows users to track their neuromuscular workout performance. The goal is to immerse the user experience while keeping the cost and size of the healthcare device to a minimum. A wearable EEG hairband and EMG shirt are outfitted with dry and non-invasive bio-signal detecting that securely attaches to the body's surface during exercise. Participants in our study are exposed to five upper-limb free-weight exercises. The result shows that low-intensity exercise can increase upper-limp muscle contraction by over 30%, and individuals with mental effort have an average precision of 81%.
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肌肉-思维:通过神经-肌肉连接感应实现力量训练监测
力量训练对身心健康都是必不可少的。肌肉质量和力量的增加可以帮助减肥,改善平衡,预防跌倒。神经肌肉联系,或思维肌肉联系,对提高力量训练成绩至关重要。然而,许多健身追踪器和应用程序缺少一个功能,允许用户跟踪他们的神经肌肉锻炼表现。目标是让用户沉浸在体验中,同时将医疗保健设备的成本和尺寸降至最低。一种可穿戴的脑电图发带和肌电图衬衫配备了干燥和非侵入性的生物信号检测器,在运动时安全地附着在身体表面。在我们的研究中,参与者进行了五种上肢自由重量练习。结果表明,低强度运动可使上肢肌肉收缩增加30%以上,脑力劳动个体的平均收缩精度为81%。
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