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  • 标题:Evaluation of Simple Microphone-based Mechanomyography (MMG) Probe Sets for Hand Stiffness Classification
  • 本地全文:下载
  • 作者:Igor Zubrycki ; Grzegorz Granosik
  • 期刊名称:Journal of Automation, Mobile Robotics & Intelligent Systems (JAMRIS)
  • 印刷版ISSN:1897-8649
  • 电子版ISSN:2080-2145
  • 出版年度:2019
  • 卷号:13
  • 期号:2
  • 页码:28-38
  • DOI:10.14313/JAMRIS/2-2019/16
  • 出版社:Industrial Research Inst. for Automation and Measurements, Warsaw
  • 摘要:We describe simple to build mechanomyography sensors,with one or two channels, based on electret microphones.We evaluate their applica􀆟on as a source of informa􀆟on about the operator􀍛s hand s􀆟􀄫ness, which can beused for changing a robot􀍛s gripper s􀆟􀄫ness during teleopera􀆟on. We explain a data ac􀆋uisi􀆟on procedure forfurther employment of a machine-learning. Finally, wepresent the results of three experiments and various machinelearning algorithms. 􀁞upport vector classi􀄮ca􀆟on,random forests, and neural-network architectures (fullyconnectedar􀆟􀄮cial neural networks, recurrent, convolu-􀆟onal􀍿 were compared in two experiments. In 􀄮rst andsecond, two probes were used with a single par􀆟cipant,with probes displaced during learning and tes􀆟ng to evaluatethe in􀅇uence of probe placement on classi􀄮ca􀆟on.In the third experiment, a dataset was collected using twoprobes and seven par􀆟cipants. 􀀄s a result of the singleprobetests, we achieved a (binary􀍿 classi􀄮ca􀆟on accuracyof 􀏵􀏰􀐹. 􀀘uring the mul􀆟-probe tests, large crosspar􀆟cipant di􀄫erences in classi􀄮ca􀆟on accuracy were noted,even when normali􀇌ing per-par􀆟cipant.
  • 关键词:MMG; acoustic myography; teleopera􀆟on; mechanomyography
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