GelSight Fin Ray: Incorporating Tactile Sensing into a Soft Compliant Robotic Gripper
Sandra Q. Liu, Edward H. Adelson

TL;DR
This paper presents a novel GelSight Fin Ray, a soft robotic finger that integrates high-resolution tactile sensing with compliance, enabling delicate manipulation tasks like reorienting a wine glass without external vision.
Contribution
The paper introduces a new design for a soft, compliant robotic finger with embedded GelSight tactile sensors that can distinguish tactile information from proprioceptive changes.
Findings
Successfully performed wine glass reorientation using tactile sensing
Achieved high-resolution tactile reconstruction and force estimation
Demonstrated compatibility with soft, compliant robotic structures
Abstract
To adapt to constantly changing environments and be safe for human interaction, robots should have compliant and soft characteristics as well as the ability to sense the world around them. Even so, the incorporation of tactile sensing into a soft compliant robot, like the Fin Ray finger, is difficult due to its deformable structure. Not only does the frame need to be modified to allow room for a vision sensor, which enables intricate tactile sensing, the robot must also retain its original mechanically compliant properties. However, adding high-resolution tactile sensors to soft fingers is difficult since many sensorized fingers, such as GelSight-based ones, are rigid and function under the assumption that changes in the sensing region are only from tactile contact and not from finger compliance. A sensorized soft robotic finger needs to be able to separate its overall proprioceptive…
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Taxonomy
TopicsAdvanced Sensor and Energy Harvesting Materials · Soft Robotics and Applications · Robot Manipulation and Learning
