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Main Authors: Pang, Chohei, Wang, Qicheng, Mak, Kinwing, Yu, Hongyu, Wang, Michael Yu
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2204.10082
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author Pang, Chohei
Wang, Qicheng
Mak, Kinwing
Yu, Hongyu
Wang, Michael Yu
author_facet Pang, Chohei
Wang, Qicheng
Mak, Kinwing
Yu, Hongyu
Wang, Michael Yu
contents Robotic grippers with visuotactile sensors have access to rich tactile information for grasping tasks but encounter difficulty in partially encompassing large objects with sufficient grip force. While hierarchical gecko-inspired adhesives are a potential technique for bridging performance gaps, they require a large contact area for efficient usage. In this work, we present a new version of an adaptive gecko gripper called Viko 2.0 that effectively combines the advantage of adhesives and visuotactile sensors. Compared with a non-hierarchical structure, a hierarchical structure with a multimaterial design achieves approximately a 1.5 times increase in normal adhesion and double in contact area. The integrated visuotactile sensor captures a deformation image of the hierarchical structure and provides a real-time measurement of contact area, shear force, and incipient slip detection at 24 Hz. The gripper is implemented on a robotic arm to demonstrate an adaptive grasping pose based on contact area, and grasps objects with a wide range of geometries and textures.
format Preprint
id arxiv_https___arxiv_org_abs_2204_10082
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Viko 2.0: A Hierarchical Gecko-inspired Adhesive Gripper with Visuotactile Sensor
Pang, Chohei
Wang, Qicheng
Mak, Kinwing
Yu, Hongyu
Wang, Michael Yu
Robotics
Robotic grippers with visuotactile sensors have access to rich tactile information for grasping tasks but encounter difficulty in partially encompassing large objects with sufficient grip force. While hierarchical gecko-inspired adhesives are a potential technique for bridging performance gaps, they require a large contact area for efficient usage. In this work, we present a new version of an adaptive gecko gripper called Viko 2.0 that effectively combines the advantage of adhesives and visuotactile sensors. Compared with a non-hierarchical structure, a hierarchical structure with a multimaterial design achieves approximately a 1.5 times increase in normal adhesion and double in contact area. The integrated visuotactile sensor captures a deformation image of the hierarchical structure and provides a real-time measurement of contact area, shear force, and incipient slip detection at 24 Hz. The gripper is implemented on a robotic arm to demonstrate an adaptive grasping pose based on contact area, and grasps objects with a wide range of geometries and textures.
title Viko 2.0: A Hierarchical Gecko-inspired Adhesive Gripper with Visuotactile Sensor
topic Robotics
url https://arxiv.org/abs/2204.10082