Litcius/Paper detail

Grasp Stability Prediction with Sim-to-Real Transfer from Tactile Sensing

Zilin Si, Zirui Zhu, Arpit Agarwal, Stuart Anderson, Wenzhen Yuan

20222022 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)29 citationsDOI

Abstract

Robot simulation has been an essential tool for data-driven manipulation tasks. However, most existing simulation frameworks lack either efficient and accurate models of physical interactions with tactile sensors or realistic tactile simulation. This makes the sim-to-real transfer for tactile-based manipulation tasks still challenging. In this work, we integrate simulation of robot dynamics and vision-based tactile sensors by modeling the physics of contact. This contact model uses simulated contact forces at the robot's end-effector to inform the generation of realistic tactile outputs. To eliminate the sim-to-real transfer gap, we calibrate our physics simulator of robot dynamics, contact model, and tactile optical simulator with real-world data, and then we demonstrate the effectiveness of our system on a zero-shot sim-to-real grasp stability prediction task where we achieve an average accuracy of 90.7% on various objects. Experiments reveal the potential of applying our simulation framework to more complicated manipulation tasks. We open-source our simulation framework at https://github.com/CMURoboTouch/Taxim/tree/taxim-robot.

Topics & Concepts

GRASPRobotComputer scienceContact forceTactile sensorPhysics engineTask (project management)SimulationStability (learning theory)Artificial intelligenceTransfer (computing)Computer visionHuman–computer interactionEngineeringMachine learningSystems engineeringProgramming languageQuantum mechanicsPhysicsParallel computingRobot Manipulation and LearningMuscle activation and electromyography studiesAdvanced Sensor and Energy Harvesting Materials