Machine learning approach to predict center of pressure trajectories in a complete gait cycle: a feedforward neural network vs. LSTM network
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Ahnryul Choi | Joung Hwan Mun | Sangsik Lee | Ki Young Lee | Hyunwoo Jung | Ahnryul Choi | J. Mun | K. Lee | Sangsik Lee | Hyunwoo Jung
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