Motion intent recognition of individual fingers based on mechanomyogram


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DING, Huijun, Qing HE, Lei ZENG, Yongjin ZHOU, Minmin SHEN, Guo DAN, 2017. Motion intent recognition of individual fingers based on mechanomyogram. In: Pattern Recognition Letters. 88, pp. 41-48. ISSN 0167-8655. eISSN 1872-7344. Available under: doi: 10.1016/j.patrec.2017.01.012

@article{Ding2017-03Motio-38904, title={Motion intent recognition of individual fingers based on mechanomyogram}, year={2017}, doi={10.1016/j.patrec.2017.01.012}, volume={88}, issn={0167-8655}, journal={Pattern Recognition Letters}, pages={41--48}, author={Ding, Huijun and He, Qing and Zeng, Lei and Zhou, Yongjin and Shen, Minmin and Dan, Guo} }

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