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Surface Electromyography (sEMG)-based Thumb-tip Angle and Force Estimation Using Artificial Neural Network for Prosthetic Thumb

机译:基于人工神经网络的表面肌电图(SEMG)基于假肢拇指的拇指尖角和力估计

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Normally, humans were born with five fingers connected to each of the hands. These fingers have their own specific role that contributes to different hand functions. Among the five fingers, the thumb plays the most special function as an anchor to many of hand activities such as turning a key, gripping a ball and holding a spoon for eating. As a result, the lost of thumb due to traumatic accidents could be catastrophic as proper hand function will be severely limited. In order to solve this problem, a prosthetic thumb is developed to be worn in complementing the function of the rest of the fingers. In this work the relationship between the electromyogram (EMG) signals and thumb tip forces are investigated in order to develop a more natural controlled prosthetic thumb. The signals are measured from the thumb intrinsic muscles namely the Adductor Pollicis (AP), Flexor Pollicis Brevis (FPB), Abductor Pollicis Brevis (APB) and First Dorsal Interosseous (FDI). Meanwhile the thumb tip force is recorded by using the force sensor (FSR). The classification of the EMG signals based on different force and thumb configuration is performed by using Artificial Neural Network (ANN). A series of experiments have been conducted and preliminary results show the efficacy of ANN to classify the EMG signals.
机译:通常情况下,人类与生俱来的五个手指连接到每个人的手。这些手指有利于不同的手功能自己特定的角色。在五个手指,拇指起着最特殊的功能为锚许多手的活动,如转动钥匙,抓球和拿着勺子吃的。其结果是,拇指由于外伤事故丢失可能是灾难性的适当的手部功能将受到严重限制。为了解决这个问题,一个假拇指开发补充其余手指的功能被磨损。在这项工作中的肌电图(EMG)信号和拇指尖力之间的关系,以便发展一种更自然的控制假肢拇指进行了研究。的信号从拇指固有肌肉即拇收肌(AP),拇短屈肌(FPB),拇短展肌(APB)和第一背侧骨间(FDI)进行测定。同时拇指尖力是通过使用所述力传感器(FSR)记录。基于不同的力和拇指配置EMG信号的分类是通过使用人工神经网络(ANN)来执行。一系列的实验已经进行,初步结果显示ANN的功效的肌电信号进行分类。

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