High-fidelity lunar topographic reconstruction across diverse terrain and illumination environments using deep learning
- URL: http://arxiv.org/abs/2601.09468v1
- Date: Wed, 14 Jan 2026 13:21:09 GMT
- Title: High-fidelity lunar topographic reconstruction across diverse terrain and illumination environments using deep learning
- Authors: Hao Chen, Philipp Gläser, Konrad Willner, Jürgen Oberst,
- Abstract summary: This study builds upon a previously proposed DL framework by incorporating a more robust scale recovery scheme.<n>It reliably reconstructs topography across lunar features of diverse scales, morphologies, and geological ages.<n>These findings suggest that DL-based approaches have the potential to leverage extensive lunar datasets to support advanced exploration missions.
- Score: 4.190898032627423
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Topographic models are essential for characterizing planetary surfaces and for inferring underlying geological processes. Nevertheless, meter-scale topographic data remain limited, which constrains detailed planetary investigations, even for the Moon, where extensive high-resolution orbital images are available. Recent advances in deep learning (DL) exploit single-view imagery, constrained by low-resolution topography, for fast and flexible reconstruction of fine-scale topography. However, their robustness and general applicability across diverse lunar landforms and illumination conditions remain insufficiently explored. In this study, we build upon our previously proposed DL framework by incorporating a more robust scale recovery scheme and extending the model to polar regions under low solar illumination conditions. We demonstrate that, compared with single-view shape-from-shading methods, the proposed DL approach exhibits greater robustness to varying illumination and achieves more consistent and accurate topographic reconstructions. Furthermore, it reliably reconstructs topography across lunar features of diverse scales, morphologies, and geological ages. High-quality topographic models are also produced for the lunar south polar areas, including permanently shadowed regions, demonstrating the method's capability in reconstructing complex and low-illumination terrain. These findings suggest that DL-based approaches have the potential to leverage extensive lunar datasets to support advanced exploration missions and enable investigations of the Moon at unprecedented topographic resolution.
Related papers
- Lunar-G2R: Geometry-to-Reflectance Learning for High-Fidelity Lunar BRDF Estimation [0.11242503819703255]
We propose a geometry-to-reflectance learning framework that predicts spatially varying BRDF parameters directly from a lunar digital elevation model (DEM)<n>Experiments on a geographically held-out region of the Tycho crater show that our approach reduces photometric error by 38 % compared to a state-of-the-art baseline.
arXiv Detail & Related papers (2026-01-15T14:39:25Z) - Adapting Stereo Vision From Objects To 3D Lunar Surface Reconstruction with the StereoLunar Dataset [0.12314765641075437]
We introduce LunarStereo, the first open dataset of stereo image pairs of the Moon.<n>It covers diverse altitudes, lighting conditions, and viewing angles around the lunar South Pole.<n>We adapt the MASt3R model to the lunar domain through fine-tuning on LunarStereo.
arXiv Detail & Related papers (2025-10-20T23:50:52Z) - StrCGAN: A Generative Framework for Stellar Image Restoration [0.0]
We introduce StrCGAN, a generative model designed to enhance low-resolution astrophotography images.<n>Our goal is to reconstruct high-fidelity ground truth-like representations of celestial objects, a task that is challenging due to the limited resolution and quality of small-telescope observations.
arXiv Detail & Related papers (2025-09-24T06:42:32Z) - LuxDiT: Lighting Estimation with Video Diffusion Transformer [66.60450792095901]
Estimating scene lighting from a single image or video remains a longstanding challenge in computer vision and graphics.<n>We propose LuxDiT, a novel data-driven approach that fine-tunes a video diffusion transformer to generate HDR environment maps conditioned on visual input.
arXiv Detail & Related papers (2025-09-03T19:59:20Z) - STAR: A Benchmark for Astronomical Star Fields Super-Resolution [52.895107920663236]
We propose STAR, a large-scale astronomical SR dataset containing 54,738 flux-consistent star field image pairs.<n>We propose a Flux-Invariant Super Resolution (FISR) model that could accurately infer the flux-consistent high-resolution images from input photometry.
arXiv Detail & Related papers (2025-07-22T09:28:28Z) - MambaDS: Near-Surface Meteorological Field Downscaling with Topography Constrained Selective State Space Modeling [68.69647625472464]
Downscaling, a crucial task in meteorological forecasting, enables the reconstruction of high-resolution meteorological states for target regions.
Previous downscaling methods lacked tailored designs for meteorology and encountered structural limitations.
We propose a novel model called MambaDS, which enhances the utilization of multivariable correlations and topography information.
arXiv Detail & Related papers (2024-08-20T13:45:49Z) - ImplicitTerrain: a Continuous Surface Model for Terrain Data Analysis [14.013976303831313]
ImplicitTerrain is an implicit neural representation (INR) approach for modeling high-resolution terrain continuously and differentiably.
Our experiments demonstrate superior surface fitting accuracy, effective topological feature retrieval, and various topographical feature extraction.
arXiv Detail & Related papers (2024-05-31T23:05:34Z) - TensoIR: Tensorial Inverse Rendering [51.57268311847087]
TensoIR is a novel inverse rendering approach based on tensor factorization and neural fields.
TensoRF is a state-of-the-art approach for radiance field modeling.
arXiv Detail & Related papers (2023-04-24T21:39:13Z) - A Comparative Study on Generative Models for High Resolution Solar
Observation Imaging [59.372588316558826]
This work investigates capabilities of current state-of-the-art generative models to accurately capture the data distribution behind observed solar activity states.
Using distributed training on supercomputers, we are able to train generative models for up to 1024x1024 resolution that produce high quality samples indistinguishable to human experts.
arXiv Detail & Related papers (2023-04-14T14:40:32Z) - High-Quality RGB-D Reconstruction via Multi-View Uncalibrated
Photometric Stereo and Gradient-SDF [48.29050063823478]
We present a novel multi-view RGB-D based reconstruction method that tackles camera pose, lighting, albedo, and surface normal estimation.
The proposed method formulates the image rendering process using specific physically-based model(s) and optimize the surface's volumetric quantities on the actual surface.
arXiv Detail & Related papers (2022-10-21T19:09:08Z) - Predicting Landsat Reflectance with Deep Generative Fusion [2.867517731896504]
Public satellite missions are commonly bound to a trade-off between spatial and temporal resolution.
This hinders their potential to assist vegetation monitoring or humanitarian actions.
We probe the potential of deep generative models to produce high-resolution optical imagery by fusing products with different spatial and temporal characteristics.
arXiv Detail & Related papers (2020-11-09T21:06:04Z) - Flood Extent Mapping based on High Resolution Aerial Imagery and DEM: A
Hidden Markov Tree Approach [10.72081512622396]
This paper evaluates the proposed geographical hidden Markov tree model through case studies on high-resolution aerial imagery.
Three scenes are selected in heavily vegetated floodplains near the cities of Grimesland and Kinston in North Carolina during Hurricane Matthew floods in 2016.
Results show that the proposed hidden Markov tree model outperforms several state of the art machine learning algorithms.
arXiv Detail & Related papers (2020-08-25T18:35:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.