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Main Authors: Meng, Zhen, Chen, Kan, Xu, Xiangmin, Pulgarin, Erwin Jose Lopez, Li, Emma, Zhao, Philip G., Flynn, David
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.02161
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author Meng, Zhen
Chen, Kan
Xu, Xiangmin
Pulgarin, Erwin Jose Lopez
Li, Emma
Zhao, Philip G.
Flynn, David
author_facet Meng, Zhen
Chen, Kan
Xu, Xiangmin
Pulgarin, Erwin Jose Lopez
Li, Emma
Zhao, Philip G.
Flynn, David
contents Active 3D scene representation is pivotal in modern robotics applications, including remote inspection, manipulation, and telepresence. Traditional methods primarily optimize geometric fidelity or rendering accuracy, but often overlook operator-specific objectives, such as safety-critical coverage or task-driven viewpoints. This limitation leads to suboptimal viewpoint selection, particularly in constrained environments such as nuclear decommissioning. To bridge this gap, we introduce a novel framework that integrates expert operator preferences into the active 3D scene representation pipeline. Specifically, we employ Reinforcement Learning from Human Feedback (RLHF) to guide robotic path planning, reshaping the reward function based on expert input. To capture operator-specific priorities, we conduct interactive choice experiments that evaluate user preferences in 3D scene representation. We validate our framework using a UR3e robotic arm for reactor tile inspection in a nuclear decommissioning scenario. Compared to baseline methods, our approach enhances scene representation while optimizing trajectory efficiency. The RLHF-based policy consistently outperforms random selection, prioritizing task-critical details. By unifying explicit 3D geometric modeling with implicit human-in-the-loop optimization, this work establishes a foundation for adaptive, safety-critical robotic perception systems, paving the way for enhanced automation in nuclear decommissioning, remote maintenance, and other high-risk environments.
format Preprint
id arxiv_https___arxiv_org_abs_2504_02161
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Preference-Driven Active 3D Scene Representation for Robotic Inspection in Nuclear Decommissioning
Meng, Zhen
Chen, Kan
Xu, Xiangmin
Pulgarin, Erwin Jose Lopez
Li, Emma
Zhao, Philip G.
Flynn, David
Robotics
Computer Vision and Pattern Recognition
Active 3D scene representation is pivotal in modern robotics applications, including remote inspection, manipulation, and telepresence. Traditional methods primarily optimize geometric fidelity or rendering accuracy, but often overlook operator-specific objectives, such as safety-critical coverage or task-driven viewpoints. This limitation leads to suboptimal viewpoint selection, particularly in constrained environments such as nuclear decommissioning. To bridge this gap, we introduce a novel framework that integrates expert operator preferences into the active 3D scene representation pipeline. Specifically, we employ Reinforcement Learning from Human Feedback (RLHF) to guide robotic path planning, reshaping the reward function based on expert input. To capture operator-specific priorities, we conduct interactive choice experiments that evaluate user preferences in 3D scene representation. We validate our framework using a UR3e robotic arm for reactor tile inspection in a nuclear decommissioning scenario. Compared to baseline methods, our approach enhances scene representation while optimizing trajectory efficiency. The RLHF-based policy consistently outperforms random selection, prioritizing task-critical details. By unifying explicit 3D geometric modeling with implicit human-in-the-loop optimization, this work establishes a foundation for adaptive, safety-critical robotic perception systems, paving the way for enhanced automation in nuclear decommissioning, remote maintenance, and other high-risk environments.
title Preference-Driven Active 3D Scene Representation for Robotic Inspection in Nuclear Decommissioning
topic Robotics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.02161