Design, implementation and evaluation for a high precision prosthetic hand using MyoBand and Random Forest algorithm

Duc Quang Nguyen, T. Pham, T. Quan
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Abstract

A prosthesis is an equipment provided to people who lost one or some parts of their limbs to help them having almost normal behaviors in daily or hard activities. The convenience and intelligence of devices should create easiness and flexibility for users. Artificial devices require interdisciplinary collaboration from neurosurgeons, surgical surgeons, physiotherapists and equipment development. Computer engineering plays a crucial role in the design step, supporting manufacturing, training and recognition to match the desirability of customers. Moreover, users need a wide range of different options such as an aesthetic functional material, a myoelectric mechanism, a body-powered appliance or an activity specified device. Thus, the flexible configuration, the proper features and the cost are some important factors that drive user's selection to the prosthesis. In this article, we describe an effective and powerful solution for analyzing, designing hardware and implementing software to train and recognize hand gestures for prosthetic arms. Moreover, we provide evaluation data of the method compared with similar approaches to support our design and implementation. This is fairly a complete system, making it a convenient solution for hand-cutoff people to control prosthetic hands using their electromyography signals. Statistical results with evaluations show that the device can respond correspondingly and the method creates promisingly recognition data after correct training processes. The prosthetic hardware implementation has also been simulated using a Light-emitting diode (LED) hand model with a high accuracy result.
基于MyoBand和随机森林算法的高精度假手设计、实现和评估
假肢是为失去肢体的人提供的一种设备,帮助他们在日常或艰苦的活动中几乎正常的行为。设备的便利性和智能化应该为用户创造易用性和灵活性。人工设备需要神经外科医生、外科医生、物理治疗师和设备开发人员的跨学科合作。计算机工程在设计步骤中起着至关重要的作用,支持制造,培训和识别,以满足客户的需求。此外,用户需要广泛的不同选择,如美学功能材料、肌电机制、身体动力设备或活动指定设备。因此,灵活的结构、合适的特性和成本是驱动用户选择假肢的重要因素。在本文中,我们描述了一种有效而强大的解决方案,用于分析,设计硬件和实现软件,以训练和识别假肢手臂的手势。此外,我们还提供了与类似方法比较的评估数据,以支持我们的设计和实现。这是一个相当完整的系统,为断手者使用肌电信号控制假手提供了方便的解决方案。统计结果与评估表明,设备可以做出相应的响应,该方法在正确的训练过程后产生了有希望的识别数据。假肢的硬件实现也使用发光二极管(LED)手部模型进行了仿真,结果精度很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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