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MoreFusion: Multi-object Reasoning for 6D Pose Estimation from Volumetric Fusion

Kentaro Wada, Edgar Sucar, Stephen James, Daniel Lenton, Andrew J. Davison

2020103 citationsDOI

Abstract

Robots and other smart devices need efficient object-based scene representations from their on-board vision systems to reason about contact, physics and occlusion. Recognized precise object models will play an important role alongside non-parametric reconstructions of unrecognized structures. We present a system which can estimate the accurate poses of multiple known objects in contact and occlusion from real-time, embodied multi-view vision. Our approach makes 3D object pose proposals from single RGB-D views, accumulates pose estimates and non-parametric occupancy information from multiple views as the camera moves, and performs joint optimization to estimate consistent, non-intersecting poses for multiple objects in contact. We verify the accuracy and robustness of our approach experimentally on 2 object datasets: YCB-Video, and our own challenging Cluttered YCB-Video. We demonstrate a real-time robotics application where a robot arm precisely and orderly disassembles complicated piles of objects, using only on-board RGB-D vision.

Topics & Concepts

Computer visionArtificial intelligencePoseRobustness (evolution)Computer scienceArticulated body pose estimationRobot3D pose estimationObject (grammar)RoboticsParametric statisticsRGB color modelMathematicsStatisticsChemistryGeneBiochemistryRobotics and Sensor-Based LocalizationRobot Manipulation and LearningAdvanced Neural Network Applications