Litcius/Paper detail

Generation of GelSight Tactile Images for Sim2Real Learning

Daniel Fernandes Gomes, Paolo Paoletti, Shan Luo

2021IEEE Robotics and Automation Letters88 citationsDOI

Abstract

Most current works in Sim2Real learning for robotic manipulation tasks leverage camera vision that may be significantly occluded by robot hands during the manipulation. Tactile sensing offers complementary information to vision and can compensate for the information loss caused by the occlusions. However, the use of tactile sensing is restricted in the Sim2Real research due to no simulated tactile sensors being available. To mitigate the gap, we introduce a novel approach for simulating a GelSight tactile sensor in the commonly used Gazebo simulator. Similar to the real GelSight sensor, the simulated sensor can produce high-resolution images from depth-maps captured by a simulated optical sensor, and reconstruct the interaction between the touched object and an opaque soft membrane. It can indirectly sense forces, geometry, texture and other properties of the object and enables Sim2Real learning with tactile sensing. Preliminary experimental results have shown that the simulated sensor could generate realistic outputs similar to the ones captured by a real GelSight sensor. All the materials used in this letter are available at https://danfergo.github.io/gelsight-simulation.

Topics & Concepts

Tactile sensorComputer visionArtificial intelligenceComputer scienceLeverage (statistics)RobotComputer graphics (images)Tactile and Sensory InteractionsAdvanced Sensor and Energy Harvesting MaterialsRobot Manipulation and Learning