Improving the Robustness of Myoelectric Pattern Recognition for Upper Limb Prostheses by Covariate Shift Adaptation
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Dario Farina | Klaus-Robert Muller | Janne M. Hahne | Han-Jeong Hwang | Sebastian Amsuss | Marina M.-C Vidovic | D. Farina | Han-Jeong Hwang | K.-R. Muller | J. Hahne | M. M. Vidovic | Sebastian Amsuss
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