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Main Authors: Polianskii, Vladislav, Dima, Elijs, Marazuela, Isabel Salmerón, Nagy, Gergő László, Sverrisson, Sigurdur, Grancharov, Volodya
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.28125
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author Polianskii, Vladislav
Dima, Elijs
Marazuela, Isabel Salmerón
Nagy, Gergő László
Sverrisson, Sigurdur
Grancharov, Volodya
author_facet Polianskii, Vladislav
Dima, Elijs
Marazuela, Isabel Salmerón
Nagy, Gergő László
Sverrisson, Sigurdur
Grancharov, Volodya
contents Many real-world 3D reconstruction applications demand photorealism and metric accuracy across unbounded, complex scenes with challenging lighting and imperfect captures that current Neural Radiance Field (NeRF) pipelines only partly satisfy. This study adapts NeRF-based 3D reconstruction to multi-region of interest unbounded scenes to improve robustness to lighting and pose variation while enforcing metric accuracy suitable for digital-twin applications. Our approach introduces (i) automated local region localization/detection and reconstruction to seamlessly prioritize areas of interest without proliferating submodules, (ii) collinearity-enforcing ray sampling to learn smooth planar and curved surfaces, (iii) depth-localized neighborhood point extraction to suppress surface artifacts, and (iv) geometry-relevant color aggregation to mitigate lighting- and pose-caused variations. Results indicate superior performance of the proposed pipeline over the baseline NeRF models and established Structure from Motion (SfM) - Multi-View Stereo (MVS) solutions.
format Preprint
id arxiv_https___arxiv_org_abs_2605_28125
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle CLEAR-NeRF: Collinearity and Local-region Enhanced Accurate 3D Reconstruction in Unbounded Scenes
Polianskii, Vladislav
Dima, Elijs
Marazuela, Isabel Salmerón
Nagy, Gergő László
Sverrisson, Sigurdur
Grancharov, Volodya
Computer Vision and Pattern Recognition
Graphics
Many real-world 3D reconstruction applications demand photorealism and metric accuracy across unbounded, complex scenes with challenging lighting and imperfect captures that current Neural Radiance Field (NeRF) pipelines only partly satisfy. This study adapts NeRF-based 3D reconstruction to multi-region of interest unbounded scenes to improve robustness to lighting and pose variation while enforcing metric accuracy suitable for digital-twin applications. Our approach introduces (i) automated local region localization/detection and reconstruction to seamlessly prioritize areas of interest without proliferating submodules, (ii) collinearity-enforcing ray sampling to learn smooth planar and curved surfaces, (iii) depth-localized neighborhood point extraction to suppress surface artifacts, and (iv) geometry-relevant color aggregation to mitigate lighting- and pose-caused variations. Results indicate superior performance of the proposed pipeline over the baseline NeRF models and established Structure from Motion (SfM) - Multi-View Stereo (MVS) solutions.
title CLEAR-NeRF: Collinearity and Local-region Enhanced Accurate 3D Reconstruction in Unbounded Scenes
topic Computer Vision and Pattern Recognition
Graphics
url https://arxiv.org/abs/2605.28125