Litcius/Paper detail

An Active Learning Based Robot Kinematic Calibration Framework Using Gaussian Processes

Ersin Daş, Joel W. Burdick

202310 citationsDOI

Abstract

Future NASA lander missions to icy moons will require completely automated, accurate, and data efficient calibration methods for the robot manipulator arms that sample icy terrains in the lander's vicinity. To support this need, this paper presents a Gaussian Process (GP) approach to the classical manipulator kinematic calibration process. Instead of identifying a corrected set of Denavit-Hartenberg kinematic parameters, a set of GPs models the residual kinematic error of the arm over the workspace. More importantly, this modeling framework allows a Gaussian Process Upper Confident Bound (GP-UCB) algorithm to efficiently and adaptively select the calibration's measurement points so as to minimize the number of experiments, and therefore minimize the time needed for recalibration. The method is demonstrated in simulation on a simple 2-DOF arm, a 6 DOF arm whose geometry is a candidate for a future NASA mission, and a 7 DOF Barrett WAM arm.

Topics & Concepts

KinematicsCalibrationComputer scienceWorkspaceRobotGaussian processRobotic armTerrainSet (abstract data type)Robot kinematicsRobot calibrationArtificial intelligenceGaussianProcess (computing)Computer visionSimulationMobile robotMathematicsPhysicsQuantum mechanicsClassical mechanicsOperating systemStatisticsBiologyEcologyProgramming languageRobotic Mechanisms and DynamicsRobotics and Sensor-Based LocalizationRobot Manipulation and Learning
An Active Learning Based Robot Kinematic Calibration Framework Using Gaussian Processes | Litcius