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

CVPR(2020)

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摘要
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.
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关键词
MoreFusion,multiobject reasoning,6D pose estimation,volumetric fusion,smart devices,on-board vision systems,occlusion,recognized precise object models,nonparametric reconstructions,embodied multiview vision,nonparametric occupancy information,on-board RGB-D vision,object-based scene representations,cluttered YCB-video,optimization,robotics arm appplication
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