Estimating voluntary elbow torque from biceps brachii electromyography using a particle filter
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Christopher G. Pretty | Benjamin C. Fortune | Logan T. Chatfield | Lachlan R. McKenzie | Guy H. Whitwham | Michael P. Hayes | C. Pretty
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