A Subvision System for Enhancing the Environmental Adaptability of the Powered Transfemoral Prosthesis
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Kuangen Zhang | Chenglong Fu | Jianwen Luo | Wentao Xiao | Wen Zhang | Haiyuan Liu | Jiale Zhu | Zeyu Lu | Yiming Rong | Clarence W de Silva | C. D. de Silva | Kuangen Zhang | Chenglong Fu | Yiming Rong | Zeyu Lu | Jianwen Luo | Wen Zhang | Haiyuan Liu | Wentao Xiao | Jiale Zhu
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