虚拟现实中的全身姿势重建和矫正,用于康复训练

Xiaokun Dai, Zhen Zhang, Shuting Zhao, Xueli Liu, Xinrong Chen
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摘要

现有统计数据表明,现在越来越多的人需要通过康复来恢复受损的身体活动能力。在康复过程中,理疗师会对患者的动作进行评估和指导,帮助他们更有效地恢复康复,防止二次伤害。然而,活动能力的不可改变性和康复训练昂贵的价格阻碍了一些患者及时获得康复治疗。利用虚拟现实技术进行康复训练可能会缓解这些问题。然而,康复领域流行的姿势重建算法主要依赖于图像,限制了其在虚拟现实中的适用性。此外,康复领域现有的姿势评估和校正方法侧重于为医生提供临床指标,无法为患者提供有效的运动指导。本文提出了一种基于虚拟现实的康复训练方法。利用虚拟现实设备(特别是头戴式显示器的手部控制器)的稀疏运动信号来重建全身姿势。然后,将重建的姿势和标准姿势输入自然语言处理模型,该模型会对比两种姿势之间的差异,并以自然语言的形式提供有效的姿势矫正指导。定量和定性结果表明,所提出的方法可以从稀疏的运动信号中实时准确地重建全身姿势。通过参考标准姿势,该模型生成了专业的运动矫正指导文本。这种方法有助于基于虚拟现实的康复训练,降低康复训练的成本,提高自我康复训练的效率。
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Full-body pose reconstruction and correction in virtual reality for rehabilitation training
Existing statistical data indicates that an increasing number of people now require rehabilitation to restore compromised physical mobility. During the rehabilitation process, physical therapists evaluate and guide the movements of patients, aiding them in a more effective recovery of rehabilitation and preventing secondary injuries. However, the immutability of mobility and the expensive price of rehabilitation training hinder some patients from timely access to rehabilitation. Utilizing virtual reality for rehabilitation training might offer a potential alleviation to these issues. However, prevalent pose reconstruction algorithms in rehabilitation primarily rely on images, limiting their applicability to virtual reality. Furthermore, existing pose evaluation and correction methods in the field of rehabilitation focus on providing clinical metrics for doctors, and failed to offer patients efficient movement guidance. In this paper, a virtual reality-based rehabilitation training method is proposed. The sparse motion signals from virtual reality devices, specifically head-mounted displays hand controllers, is used to reconstruct full body poses. Subsequently, the reconstructed poses and the standard poses are fed into a natural language processing model, which contrasts the difference between the two poses and provides effective pose correction guidance in the form of natural language. Quantitative and qualitative results indicate that the proposed method can accurately reconstruct full body poses from sparse motion signals in real-time. By referencing standard poses, the model generates professional motion correction guidance text. This approach facilitates virtual reality-based rehabilitation training, reducing the cost of rehabilitation training and enhancing the efficiency of self-rehabilitation training.
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