Sensor Abstracted Extremity Representation for Automatic Fugl-Meyer Assessment
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Luis Enrique Sucar | Felipe Orihuela-Espina | Jorge Hernández-Franco | Patrick Heyer | Luis R. Castrejon | Luis R. Castrejón | L. Sucar | F. Orihuela-Espina | Jorge Hernández-Franco | P. Heyer
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