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Main Authors: Cobeli, Stefan, Omar, Kazi Shahrukh, Valença, Rodrigo, Ferreira, Nivan, Miranda, Fabio
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.14742
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author Cobeli, Stefan
Omar, Kazi Shahrukh
Valença, Rodrigo
Ferreira, Nivan
Miranda, Fabio
author_facet Cobeli, Stefan
Omar, Kazi Shahrukh
Valença, Rodrigo
Ferreira, Nivan
Miranda, Fabio
contents Despite the growing availability of 3D urban datasets, extracting insights remains challenging due to computational bottlenecks and the complexity of interacting with data. In fact, the intricate geometry of 3D urban environments results in high degrees of occlusion and requires extensive manual viewpoint adjustments that make large-scale exploration inefficient. To address this, we propose a view-based approach for 3D data exploration, where a vector field encodes views from the environment. To support this approach, we introduce a neural field-based method that constructs an efficient implicit representation of 3D environments. This representation enables both faster direct queries, which consist of the computation of view assessment indices, and inverse queries, which help avoid occlusion and facilitate the search for views that match desired data patterns. Our approach supports key urban analysis tasks such as visibility assessments, solar exposure evaluation, and assessing the visual impact of new developments. We validate our method through quantitative experiments, case studies informed by real-world urban challenges, and feedback from domain experts. Results show its effectiveness in finding desirable viewpoints, analyzing building facade visibility, and evaluating views from outdoor spaces. Code and data are publicly available at https://urbantk.org/neural-3d.
format Preprint
id arxiv_https___arxiv_org_abs_2511_14742
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Neural Field-Based Approach for View Computation & Data Exploration in 3D Urban Environments
Cobeli, Stefan
Omar, Kazi Shahrukh
Valença, Rodrigo
Ferreira, Nivan
Miranda, Fabio
Computer Vision and Pattern Recognition
Graphics
Despite the growing availability of 3D urban datasets, extracting insights remains challenging due to computational bottlenecks and the complexity of interacting with data. In fact, the intricate geometry of 3D urban environments results in high degrees of occlusion and requires extensive manual viewpoint adjustments that make large-scale exploration inefficient. To address this, we propose a view-based approach for 3D data exploration, where a vector field encodes views from the environment. To support this approach, we introduce a neural field-based method that constructs an efficient implicit representation of 3D environments. This representation enables both faster direct queries, which consist of the computation of view assessment indices, and inverse queries, which help avoid occlusion and facilitate the search for views that match desired data patterns. Our approach supports key urban analysis tasks such as visibility assessments, solar exposure evaluation, and assessing the visual impact of new developments. We validate our method through quantitative experiments, case studies informed by real-world urban challenges, and feedback from domain experts. Results show its effectiveness in finding desirable viewpoints, analyzing building facade visibility, and evaluating views from outdoor spaces. Code and data are publicly available at https://urbantk.org/neural-3d.
title A Neural Field-Based Approach for View Computation & Data Exploration in 3D Urban Environments
topic Computer Vision and Pattern Recognition
Graphics
url https://arxiv.org/abs/2511.14742