Super-Resolved Canopy Height Mapping from Sentinel-2 Time Series Using LiDAR HD Reference Data across Metropolitan France
- URL: http://arxiv.org/abs/2512.11524v1
- Date: Fri, 12 Dec 2025 12:49:16 GMT
- Title: Super-Resolved Canopy Height Mapping from Sentinel-2 Time Series Using LiDAR HD Reference Data across Metropolitan France
- Authors: Ekaterina Kalinicheva, Florian Helen, Stéphane Mermoz, Florian Mouret, Milena Planells,
- Abstract summary: We introduce THREASURE-Net, a novel end-to-end framework for Tree Height Regression And Super-Resolution.<n>The model is trained on Sentinel-2 time series using reference height metrics derived from LiDAR HD data.<n>We evaluate three model variants, producing tree-height predictions at 2.5 m, 5 m, and 10 m resolution.
- Score: 0.9351726364879229
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Fine-scale forest monitoring is essential for understanding canopy structure and its dynamics, which are key indicators of carbon stocks, biodiversity, and forest health. Deep learning is particularly effective for this task, as it integrates spectral, temporal, and spatial signals that jointly reflect the canopy structure. To address this need, we introduce THREASURE-Net, a novel end-to-end framework for Tree Height Regression And Super-Resolution. The model is trained on Sentinel-2 time series using reference height metrics derived from LiDAR HD data at multiple spatial resolutions over Metropolitan France to produce annual height maps. We evaluate three model variants, producing tree-height predictions at 2.5 m, 5 m, and 10 m resolution. THREASURE-Net does not rely on any pretrained model nor on reference very high resolution optical imagery to train its super-resolution module; instead, it learns solely from LiDAR-derived height information. Our approach outperforms existing state-of-the-art methods based on Sentinel data and is competitive with methods based on very high resolution imagery. It can be deployed to generate high-precision annual canopy-height maps, achieving mean absolute errors of 2.62 m, 2.72 m, and 2.88 m at 2.5 m, 5 m, and 10 m resolution, respectively. These results highlight the potential of THREASURE-Net for scalable and cost-effective structural monitoring of temperate forests using only freely available satellite data. The source code for THREASURE-Net is available at: https://github.com/Global-Earth-Observation/threasure-net.
Related papers
- Forest canopy height estimation from satellite RGB imagery using large-scale airborne LiDAR-derived training data and monocular depth estimation [2.3321503459324915]
Large-scale, high-resolution forest canopy height mapping plays a crucial role in understanding regional and global carbon and water cycles.<n>Near-surface LiDAR platforms offer much finer measurements of forest canopy structure.<n>State-of-the-art monocular depth estimation model, Depth Anything V2, was trained using 16,000 km2 of canopy height models.
arXiv Detail & Related papers (2026-02-06T08:53:32Z) - SERA-H: Beyond Native Sentinel Spatial Limits for High-Resolution Canopy Height Mapping [3.8902217877872034]
High-resolution mapping of canopy height is essential for forest management and biodiversity monitoring.<n>We present SERA-H, an end-to-end model combining a super-resolution module and temporal attention encoding.<n>Our model generates 2.5 m resolution height maps from freely available Sentinel-1 and Sentinel-2 time series data.
arXiv Detail & Related papers (2025-12-19T23:23:14Z) - UnLoc: Leveraging Depth Uncertainties for Floorplan Localization [80.55849461031879]
UnLoc is an efficient data-driven solution for sequential camera localization within floorplans.<n>We introduce a novel probabilistic model that incorporates uncertainty estimation, modeling depth predictions as explicit probability distributions.<n>We evaluate UnLoc on large-scale synthetic and real-world datasets, demonstrating significant improvements in terms of accuracy and robustness.
arXiv Detail & Related papers (2025-09-14T14:45:43Z) - Data Augmentation and Resolution Enhancement using GANs and Diffusion Models for Tree Segmentation [49.13393683126712]
Urban forests play a key role in enhancing environmental quality and supporting biodiversity in cities.<n> accurately detecting trees is challenging due to complex landscapes and the variability in image resolution caused by different satellite sensors or UAV flight altitudes.<n>We propose a novel pipeline that integrates domain adaptation with GANs and Diffusion models to enhance the quality of low-resolution aerial images.
arXiv Detail & Related papers (2025-05-21T03:57:10Z) - Lightweight RGB-D Salient Object Detection from a Speed-Accuracy Tradeoff Perspective [54.91271106816616]
Current RGB-D methods usually leverage large-scale backbones to improve accuracy but sacrifice efficiency.<n>We propose a Speed-Accuracy Tradeoff Network (SATNet) for Lightweight RGB-D SOD from three fundamental perspectives.<n> Concerning depth quality, we introduce the Depth Anything Model to generate high-quality depth maps.<n>For modality fusion, we propose a Decoupled Attention Module (DAM) to explore the consistency within and between modalities.<n>For feature representation, we develop a Dual Information Representation Module (DIRM) with a bi-directional inverted framework.
arXiv Detail & Related papers (2025-05-07T19:37:20Z) - Depth Any Canopy: Leveraging Depth Foundation Models for Canopy Height Estimation [4.69726714177332]
Estimating global tree canopy height is crucial for forest conservation and climate change applications.
An efficient alternative is to train a canopy height estimator to operate on single-view remotely sensed imagery.
Recent monocular depth estimation foundation models have show strong zero-shot performance even for complex scenes.
arXiv Detail & Related papers (2024-08-08T15:24:07Z) - Multimodal deep learning for mapping forest dominant height by fusing
GEDI with earth observation data [5.309673841813994]
We propose a novel deep learning framework termed the multi-modal attention remote sensing network (MARSNet) to estimate forest dominant height.
MARSNet comprises separate encoders for each remote sensing data modality to extract multi-scale features, and a shared decoder to fuse the features and estimate height.
Our research demonstrates the effectiveness of a multimodal deep learning approach fusing GEDI with SAR and passive optical imagery for enhancing the accuracy of high resolution dominant height estimation.
arXiv Detail & Related papers (2023-11-20T14:02:50Z) - Semi-supervised Learning from Street-View Images and OpenStreetMap for
Automatic Building Height Estimation [59.6553058160943]
We propose a semi-supervised learning (SSL) method of automatically estimating building height from Mapillary SVI and OpenStreetMap data.
The proposed method leads to a clear performance boosting in estimating building heights with a Mean Absolute Error (MAE) around 2.1 meters.
The preliminary result is promising and motivates our future work in scaling up the proposed method based on low-cost VGI data.
arXiv Detail & Related papers (2023-07-05T18:16:30Z) - Vision Transformers, a new approach for high-resolution and large-scale
mapping of canopy heights [50.52704854147297]
We present a new vision transformer (ViT) model optimized with a classification (discrete) and a continuous loss function.
This model achieves better accuracy than previously used convolutional based approaches (ConvNets) optimized with only a continuous loss function.
arXiv Detail & Related papers (2023-04-22T22:39:03Z) - Very high resolution canopy height maps from RGB imagery using
self-supervised vision transformer and convolutional decoder trained on
Aerial Lidar [14.07306593230776]
This paper presents the first high-resolution canopy height map concurrently produced for multiple sub-national jurisdictions.
The maps are generated by the extraction of features from a self-supervised model trained on Maxar imagery from 2017 to 2020.
We also introduce a post-processing step using a convolutional network trained on GEDI observations.
arXiv Detail & Related papers (2023-04-14T15:52:57Z) - High-resolution canopy height map in the Landes forest (France) based on
GEDI, Sentinel-1, and Sentinel-2 data with a deep learning approach [0.044381279572631216]
We develop a deep learning model based on multi-stream remote sensing measurements to create a high-resolution canopy height map.
The model outputs allow us to generate a 10 m resolution canopy height map of the whole "Landes de Gascogne" forest area for 2020.
For all validation datasets in coniferous forests, our model showed better metrics than previous canopy height models available in the same region.
arXiv Detail & Related papers (2022-12-20T14:14:37Z) - Country-wide Retrieval of Forest Structure From Optical and SAR
Satellite Imagery With Bayesian Deep Learning [74.94436509364554]
We propose a Bayesian deep learning approach to densely estimate forest structure variables at country-scale with 10-meter resolution.
Our method jointly transforms Sentinel-2 optical images and Sentinel-1 synthetic aperture radar images into maps of five different forest structure variables.
We train and test our model on reference data from 41 airborne laser scanning missions across Norway.
arXiv Detail & Related papers (2021-11-25T16:21:28Z)
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.