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Learning Data Correction for Myoelectric Hand Based on “Survival of the Fittest”
Author(s) -
Yusuke Yamanoi,
Shunta Togo,
Yinlai Jiang,
Hiroshi Yokoi
Publication year - 2021
Publication title -
cyborg and bionic systems
Language(s) - English
Resource type - Journals
eISSN - 2097-1087
pISSN - 2692-7632
DOI - 10.34133/2021/9875814
Subject(s) - computer science , artificial intelligence , machine learning , deep learning , wearable computer , embedded system
In recent years, myoelectric hands have become multi-degree-of-freedom (DOF) devices, which are controlled via machine learning methods. However, currently, learning data for myoelectric hands are gathered manually and thus tend to be of low quality. Moreover, in the case of infants, gathering accurate learning data is nearly impossible because of the difficulty of communicating with them. Therefore, a method that automatically corrects errors in the learning data is necessary. Myoelectric hands are wearable robots and thus have volumetric and weight constraints that make it infeasible to store large amounts of data or apply complex processing methods. Compared with general machine learning methods such as image processing, those for myoelectric hands have limitations on the data storage, although the amount of data to be processed is quite large. If we can use this huge amount of processing data to correct the learning data without storing the processing data, the machine learning performance is expected to improve. We then propose a method for correcting the learning data through utilisation of the signals acquired during the use of the myoelectric hand. The proposed method is inspired by “survival of the fittest.” The effectiveness of the method was verified through offline analysis. The method reduced the amount of learning data and learning time by approximately a factor of 10 while maintaining classification rates. The classification rates improved for one participant but slightly deteriorated on average among all participants. To solve this problem, verifying the method via interactive learning will be necessary in the future.

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