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Consensus-Driven Uncertainty for Robotic Grasping based on RGB Perception

Consensus-Driven Uncertainty for Robotic Grasping based on RGB Perception

来源:Arxiv_logoArxiv
英文摘要

Deep object pose estimators are notoriously overconfident. A grasping agent that both estimates the 6-DoF pose of a target object and predicts the uncertainty of its own estimate could avoid task failure by choosing not to act under high uncertainty. Even though object pose estimation improves and uncertainty quantification research continues to make strides, few studies have connected them to the downstream task of robotic grasping. We propose a method for training lightweight, deep networks to predict whether a grasp guided by an image-based pose estimate will succeed before that grasp is attempted. We generate training data for our networks via object pose estimation on real images and simulated grasping. We also find that, despite high object variability in grasping trials, networks benefit from training on all objects jointly, suggesting that a diverse variety of objects can nevertheless contribute to the same goal.

Eric C. Joyce、Qianwen Zhao、Nathaniel Burgdorfer、Long Wang、Philippos Mordohai

计算技术、计算机技术

Eric C. Joyce,Qianwen Zhao,Nathaniel Burgdorfer,Long Wang,Philippos Mordohai.Consensus-Driven Uncertainty for Robotic Grasping based on RGB Perception[EB/OL].(2025-06-26)[2025-07-16].https://arxiv.org/abs/2506.20045.点此复制

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