Direct Estimation of Wrist Joint Angular Velocities from Surface EMGs by Using an SDNN Function Approximator.

Lecture Notes in Computer Science(2016)

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摘要
The present paper proposes a method for estimating joint angular velocities from multi-channel surface electromyogram (sEMG) signals. This method uses a selective desensitization neural network (SDNN) as a function approximator that learns the relation between integrated sEMG signals and instantaneous joint angular velocities. A comparison experiment with a Kalman filter model shows that this method can estimate wrist angular velocities in real time with high accuracy, especially during rapid motion.
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关键词
Surface electromyogram,Angular velocity estimation,Selective desensitization neural network
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