Direction of Slip Detection for Adaptive Grasp Force Control with a Dexterous Robotic Hand.

Moaed A Abd, Iker J Gonzalez, Thomas C Colestock, Benjamin A Kent, Erik D Engeberg
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引用次数: 16

Abstract

A novel method of tactile communication among human-robot and robot-robot collaborative teams is developed for the purpose of adaptive grasp control of dexterous robotic hands. Neural networks are applied to the problem of classifying the direction objects slide against different tactile fingertip sensors in real-time. This ability to classify the direction that an object slides in a dexterous robotic hand was used for adaptive grasp synergy control to afford context dependent robotic reflexes in response to the direction of grasped object slip. Case studies with robot-robot and human-robot collaborative teams successfully demonstrated the feasibility; when object slip in the direction of gravity (towards the ground) was detected, the dexterous hand increased the grasp force to prevent dropping the object. When a human or robot applied an upward force to cause the grasped object to slip upward, the dexterous hand was programmed to release the object into the hand of the other team member. This method of adaptive grasp control using direction of slip detection can improve the efficiency of human-robot and robot-robot teams.

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灵巧机械手自适应抓取力控制的滑移检测方向。
针对灵巧机械手的自适应抓握控制,提出了一种新的人-机器人和机器人-机器人协作团队之间的触觉交流方法。将神经网络应用于不同触觉指尖传感器对物体滑动方向的实时分类问题。这种对物体滑动方向进行分类的能力被用于自适应抓取协同控制,以提供机器人对抓取物体滑动方向的上下文依赖反射。机器人-机器人和人-机器人协作团队的案例研究成功地证明了该方法的可行性;当检测到物体在重力方向(朝向地面)滑动时,灵巧的手增加抓握力以防止物体掉落。当一个人或机器人施加一个向上的力,使抓住的物体向上滑动时,灵巧的手被编程释放到另一个团队成员的手中。这种利用滑移方向检测的自适应抓取控制方法可以提高人-机器人和机器人-机器人团队的工作效率。
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