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Improving long term myoelectric decoding, using an adaptive classifier with label correction

机译:使用带有标签校正的自适应分类器改善长期肌电解码

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This study presents a novel adaptive myoelectric decoding algorithm for control of upper limb prosthesis. Myoelectric decoding algorithms are inherently subject to decay in decoding accuracy over time, which is caused by the changes occurring in the muscle signals. The proposed algorithm relies on an unsupervised and on demand update of the training set, and has been designed to adapt to both the slow and fast changes that occur in myoelectric signals. An update in the training data is used to counter the slow changes, whereas an update with label correction addresses the fast changes in the signals. We collected myoelectric data from an able bodied user for over four and a half hours, while the user performed repetitions of eight wrist movements. The major benefit of the proposed algorithm is the lower rate of decay in accuracy; it has a decay rate of 0.2 per hour as opposed to 3.3 for the non adaptive classifier. The results show that, long term decoding accuracy in EMG signals can be maintained over time, improving the performance and reliability of myoelectric prosthesis.
机译:这项研究提出了一种新颖的自适应肌电解码算法,用于控制上肢假体。肌电解码算法固有地会随着时间的流逝而导致解码精度下降,这是由肌肉信号中发生的变化引起的。所提出的算法依赖于训练集的无监督和按需更新,并且已被设计为适应肌电信号中发生的缓慢和快速变化。训练数据中的更新用于应对缓慢的变化,而带有标签校正的更新可解决信号中的快速变化。我们从一个身体健全的用户那里收集了超过四个半小时的肌电数据,而该用户重复了八次腕部运动。提出的算法的主要好处是精度下降率较低。与非自适应分类器的3.3相比,它的每小时衰减率为0.2。结果表明,随着时间的推移,可以保持EMG信号的长期解码精度,从而改善了肌电假体的性能和可靠性。

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