Upper Limb Position Tracking with a Single Inertial Sensor Using Dead Reckoning Method with Drift Correction Techniques
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Raymond R. Bond | M. Mulvenna | M. Pepper | Zhibao Wang | D. Finlay | L. Bai | Huiru Zheng
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