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首页> 外文期刊>Biomedical signal processing and control >Reducing the effect of wrist variation on pattern recognition of Myoelectric Hand Prostheses Control through Dynamic Time Warping
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Reducing the effect of wrist variation on pattern recognition of Myoelectric Hand Prostheses Control through Dynamic Time Warping

机译:通过动态时间扭曲减少手腕变化对肌电手假体控制模式识别的影响

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摘要

For upper limb prostheses, research carried out earlier mainly focused on increasing the classification accuracy of the hand movements; but there exist a little work done on factors affecting it in real-time control such as wrist variation. Amputees with functional wrist use their prostheses in multiple wrist positions. Since the Electromyography (EMG) data is taken while the subject is performing the motion in different wrist position, it can degrade the performance of the Pattern Recognition (PR) system. In this work, a wrist independent PR scheme has been developed. In this regard, Dynamic Time Warping (DTW) is used to overcome the effects due to wrist variation. The performance of the DTW scheme as a PR system is validated using two training methods; with classification accuracy as a performance measure on data taken from the database of ten intact subjects for six hand motions carried out at three different wrist orientations. On the database, an average classification accuracy of about 93.3% was obtained while trained using EMG data from all possible wrist positions. The effectiveness of the method is demonstrated in terms of classification accuracy and processing time when compared with the Time-domain power spectral descriptors (TD-PSD) method which outperformed other methods in the literature for reducing the impact of wrist variation on EMG based PR. The results show that the DTW can be a computationally cheap and accurate PR system for real-time hand movement classification. (C) 2019 Elsevier Ltd. All rights reserved.
机译:对于上肢假肢,较早进行的研究主要集中在提高手部运动的分类准确性上。但是在影响实时控制的因素(例如手腕变化)方面还需要做一些工作。具有手腕功能的截肢者在多个手腕位置使用假肢。由于肌电图(EMG)数据是在对象以不同的手腕位置执行运动时获取的,因此它可能会降低模式识别(PR)系统的性能。在这项工作中,已经开发了独立于手腕的PR方案。在这方面,动态时间规整(DTW)用于克服由于手腕变化而产生的影响。 DTW方案作为PR系统的性能通过两种训练方法进行了验证:使用分类精度作为对从十个完整受试者的数据库中获取的数据的性能指标,这些数据是在三个不同的手腕方向上进行的六次手部动作。在数据库上,使用来自所有可能手腕位置的EMG数据进行训练时,获得了约93.3%的平均分类准确率。与时域功率谱描述符(TD-PSD)方法相比,该方法的有效性在分类准确性和处理时间方面得到了证明,该方法优于文献中的其他方法,可减少手腕变异对基于EMG的PR的影响。结果表明,DTW可以是一种用于实时手部运动分类的计算廉价且准确的PR系统。 (C)2019 Elsevier Ltd.保留所有权利。

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