Shuo WangJingjing ZhengBin ZhengXianta Jiang
Pattern recognition using surface Electromyography (sEMG) applied on prosthesis control has attracted much attention in these years. In most of the existing methods, the sEMG signal during the firmly grasped period is used for grasp classification because good performance can be achieved due to its relatively stable signal. However, using the only the firmly grasped period may cause a delay to control the prosthetic hand gestures. Regarding this issue, we explored how grasp classification accuracy changes during the reaching and grasping process, and identified the period that can leverage the grasp classification accuracy and the earlier grasp detection. We found that the grasp classification accuracy increased along the hand gradually grasping the object till firmly grasped, and there is a sweet period before firmly grasped period, which could be suitable for early grasp classification with reduced delay. On top of this, we also explored corresponding training strategies for better grasp classification in real-time applications.
Shuo WangJingjing ZhengZiwei HuangXiaoqin ZhangVinicius Prado da FonsecaBin ZhengXianta Jiang
Haruhisa KawasakiTetsuya MouriKentaro IwaseHirofumi Sakaeda
Mostafa OrbanXiaodong ZhangZhufeng LuAntonio MarcalAhmed EmadGilbert Masengo
Beyda TaşarAlper Kadir TanyıldızıArif GültenOğuz Yakut