计算机科学
人工智能
计算机视觉
触觉传感器
机器人
软机器人
伺服
机械臂
作者
Nathan F. Lepora,John E. Lloyd
出处
期刊:arXiv: Robotics
日期:2020-12-04
被引量:4
摘要
This paper describes a new way of controlling robots using soft tactile sensors: pose-based tactile servo (PBTS) control. The basic idea is to embed a tactile perception model for estimating the sensor pose within a servo control loop that is applied to local object features such as edges and surfaces. PBTS control is implemented with a soft curved optical tactile sensor (the BRL TacTip) using a convolutional neural network trained to be insensitive to shear. In consequence, robust and accurate controlled motion over various complex 3D objects is attained. First, we review tactile servoing and its relation to visual servoing, before formalising PBTS control. Then, we assess PBTS over a range of regular and irregular objects. Finally, we reflect on the relation to visual servo control and discuss how controlled soft touch gives a route towards human-like dexterity in robots. A summary video is available here this https URL
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