DocumentCode :
73578
Title :
Embedded Human Control of Robots Using Myoelectric Interfaces
Author :
Antuvan, Chris Wilson ; Ison, Mark ; Artemiadis, Panagiotis
Author_Institution :
Sch. for Eng. of Matter, Transp. & Energy, Arizona State Univ., Tempe, AZ, USA
Volume :
22
Issue :
4
fYear :
2014
fDate :
Jul-14
Firstpage :
820
Lastpage :
827
Abstract :
Myoelectric controlled interfaces have become a research interest for use in advanced prostheses, exoskeletons, and robot teleoperation. Current research focuses on improving a user´s initial performance, either by training a decoding function for a specific user or implementing “intuitive” mapping functions as decoders. However, both approaches are limiting, with the former being subject specific, and the latter task specific. This paper proposes a paradigm shift on myoelectric interfaces by embedding the human as controller of the system to be operated. Using abstract mapping functions between myoelectric activity and control actions for a task, this study shows that human subjects are able to control an artificial system with increasing efficiency by just learning how to control it. The method efficacy is tested by using two different control tasks and four different abstract mappings relating upper limb muscle activity to control actions for those tasks. The results show that all subjects were able to learn the mappings and improve their performance over time. More interestingly, a chronological evaluation across trials reveals that the learning curves transfer across subsequent trials having the same mapping, independent of the tasks to be executed. This implies that new muscle synergies are developed and refined relative to the mapping used by the control task, suggesting that maximal performance may be achieved by learning a constant, arbitrary mapping function rather than dynamic subject- or task-specific functions. Moreover, the results indicate that the method may extend to the neural control of any device or robot, without limitations for anthropomorphism or human-related counterparts.
Keywords :
electromyography; learning (artificial intelligence); medical robotics; medical signal detection; medical signal processing; muscle; neurophysiology; abstract mapping functions; anthropomorphism; arbitrary mapping function; artificial system; chronological evaluation; control tasks; decoding function; embedded human control; exoskeletons; human-related counterparts; intuitive mapping functions; learning; learning curve transfer; muscle synergies; myoelectric controlled interfaces; neural control; prostheses; robot teleoperation; task-specific functions; upper limb muscle activity; Biomechanics; Brain modeling; Decoding; Electromyography; Inverse problems; Muscles; Robots; Electromyography; human-robot interaction; motor learning; myoelectric control; real-time systems;
fLanguage :
English
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
1534-4320
Type :
jour
DOI :
10.1109/TNSRE.2014.2302212
Filename :
6720133
Link To Document :
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