Ankle foot motion recognition based on wireless wearable sEMG and acceleration sensors for smart AFO
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Bo Liang | Xuesong Ye | Congcong Zhou | Lilin Yang | Heng Liao | B. Liang | X. Ye | Congcong Zhou | Lilin Yang | Heng-Tseng Liao
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