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Contact Surface and Pose Recognition: Utilizing Multipole Magnetic Tactile Sensor with Meta Learning Model

Ziwei Xia, Bin Fang, Fuchun Sun, Huaping Liu, Wei Feng Xu, Ling Fu, yiyong yang

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Abstract

Soft magnetic tactile sensors have been gradually applied to robotic systems due to their low-cost and simple fab- rication. The previous soft magnetic tactile sensor was developed for tactile features of a single point (i.e., force/location) estimation and proved the feasibility by experiments. However, extracting tactile features of a surface (i.e., contact shape) by magnetic sensors remains a challenge, which limits the application. In this paper, a soft magnetic tactile sensor that can extract contact surface shape and pose features is fabricated and a multi-pole magnetization method is developed to improve the performance of tactile sensor. Furthermore, we propose a metric-based meta- learning method to extract the tactile feature of the contact surface shape and pose from magnetic data under limited sample conditions and the method is verified by a series of experiments. The experimental results show that our method can achieve more than 80% accuracy in contact shape recognition and more than 95% accuracy in contact pose recognition. The experimental results demonstrate that our method can extract tactile features under limited data conditions and has a certain generalization ability for new contact data.

Index terms

Soft Sensors and Actuators Force and Tactile Sensing Perception for Grasping and Manipulation