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Main Authors: Chen, Timothy, Dai, Adam, Adang, Maximilian, Gao, Grace, Schwager, Mac
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.05259
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author Chen, Timothy
Dai, Adam
Adang, Maximilian
Gao, Grace
Schwager, Mac
author_facet Chen, Timothy
Dai, Adam
Adang, Maximilian
Gao, Grace
Schwager, Mac
contents What makes a good viewpoint? The quality of the data used to learn 3D reconstructions is crucial for enabling efficient and accurate scene modeling. We study the active view selection problem and develop a principled analysis that yields a simple and interpretable criterion for selecting informative camera poses. Our key insight is that informative views can be obtained by minimizing a tractable approximation of the Fisher Information Gain, which reduces to favoring viewpoints that cover geometry that has been insufficiently observed by past cameras. This leads to a lightweight coverage-based view selection metric that avoids expensive transmittance estimation and is robust to noise and training dynamics. We call this metric COVER (Camera Optimization for View Exploration and Reconstruction). We integrate our method into the Nerfstudio framework and evaluate it on real datasets within fixed and embodied data acquisition scenarios. Across multiple datasets and radiance-field baselines, our method consistently improves reconstruction quality compared to state-of-the-art active view selection methods. Additional visualizations and our Nerfstudio package can be found at https://chengine.github.io/nbv_gym/.
format Preprint
id arxiv_https___arxiv_org_abs_2604_05259
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Coverage Optimization for Camera View Selection
Chen, Timothy
Dai, Adam
Adang, Maximilian
Gao, Grace
Schwager, Mac
Computer Vision and Pattern Recognition
Robotics
What makes a good viewpoint? The quality of the data used to learn 3D reconstructions is crucial for enabling efficient and accurate scene modeling. We study the active view selection problem and develop a principled analysis that yields a simple and interpretable criterion for selecting informative camera poses. Our key insight is that informative views can be obtained by minimizing a tractable approximation of the Fisher Information Gain, which reduces to favoring viewpoints that cover geometry that has been insufficiently observed by past cameras. This leads to a lightweight coverage-based view selection metric that avoids expensive transmittance estimation and is robust to noise and training dynamics. We call this metric COVER (Camera Optimization for View Exploration and Reconstruction). We integrate our method into the Nerfstudio framework and evaluate it on real datasets within fixed and embodied data acquisition scenarios. Across multiple datasets and radiance-field baselines, our method consistently improves reconstruction quality compared to state-of-the-art active view selection methods. Additional visualizations and our Nerfstudio package can be found at https://chengine.github.io/nbv_gym/.
title Coverage Optimization for Camera View Selection
topic Computer Vision and Pattern Recognition
Robotics
url https://arxiv.org/abs/2604.05259