Carcereri, Daniel and Rizzoli, Paola and Dell'Amore, Luca and Bueso Bello, Jose Luis and Ienco, Dino and Bruzzone, Lorenzo (2024) Generation of country-scale canopy height maps over Gabon using deep learning and TanDEM-X InSAR data. Remote Sensing of Environment, 311. Elsevier. doi: 10.1016/j.rse.2024.114270. ISSN 0034-4257.
|
PDF
- Published version
6MB |
Official URL: https://www.sciencedirect.com/science/article/pii/S0034425724002888
Abstract
Operational canopy height mapping at high resolution remains a challenging task at country-level. Most of the existing state-of-the-art inversion methods propose physically-based schemes which are specifically tuned for local scales. Only few approaches in the literature have attempted to produce country or global scale estimates, mostly by means of data-driven approaches and multi-spectral data sources. In this paper, we propose a robust deep learning approach that exploits single-pass interferometric TanDEM-X data to generate accurate forest height estimates from a single interferometric bistatic acquisition. The model development is driven by considerations on both the final performance and the trustworthiness of the model for large-scale deployment in the context of tropical forests. We train and test our model over the five tropical sites of the AfriSAR 2016 campaign, situated in the West Central state of Gabon, performing spatial cross-validation experiments to test its generalization capability. We define a specific training dataset and input predictors to develop a robust model for country-scale inference, by finding an optimal trade-off between the model performance and the large-scale reliability. The proposed model achieves an overall estimation bias of 0.12 m, a mean absolute error of 3.90 m, a root mean squared error of 5.08 m and a coefficient of determination of 0.77. Finally, we generate a time-tagged country-scale canopy height map of Gabon at 25 m resolution, discussing the potential and challenges of these kinds of products for their application in different scenarios and for the monitoring of forest changes.
| Item URL in elib: | https://elib.dlr.de/209387/ | ||||||||||||||||||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Document Type: | Article | ||||||||||||||||||||||||||||
| Title: | Generation of country-scale canopy height maps over Gabon using deep learning and TanDEM-X InSAR data | ||||||||||||||||||||||||||||
| Authors: |
| ||||||||||||||||||||||||||||
| Date: | 1 September 2024 | ||||||||||||||||||||||||||||
| Journal or Publication Title: | Remote Sensing of Environment | ||||||||||||||||||||||||||||
| Refereed publication: | Yes | ||||||||||||||||||||||||||||
| Open Access: | Yes | ||||||||||||||||||||||||||||
| Gold Open Access: | No | ||||||||||||||||||||||||||||
| In SCOPUS: | Yes | ||||||||||||||||||||||||||||
| In ISI Web of Science: | Yes | ||||||||||||||||||||||||||||
| Volume: | 311 | ||||||||||||||||||||||||||||
| DOI: | 10.1016/j.rse.2024.114270 | ||||||||||||||||||||||||||||
| Publisher: | Elsevier | ||||||||||||||||||||||||||||
| ISSN: | 0034-4257 | ||||||||||||||||||||||||||||
| Status: | Published | ||||||||||||||||||||||||||||
| Keywords: | Forest height; Forest parameter regression; Deep learning; Bistatic SAR; Interferometric coherence; InSAR; TanDEM-X; LVIS | ||||||||||||||||||||||||||||
| HGF - Research field: | Aeronautics, Space and Transport | ||||||||||||||||||||||||||||
| HGF - Program: | Space | ||||||||||||||||||||||||||||
| HGF - Program Themes: | Earth Observation | ||||||||||||||||||||||||||||
| DLR - Research area: | Raumfahrt | ||||||||||||||||||||||||||||
| DLR - Program: | R EO - Earth Observation | ||||||||||||||||||||||||||||
| DLR - Research theme (Project): | R - AI4SAR | ||||||||||||||||||||||||||||
| Location: | Oberpfaffenhofen | ||||||||||||||||||||||||||||
| Institutes and Institutions: | Microwaves and Radar Institute > Spaceborne SAR Systems Microwaves and Radar Institute | ||||||||||||||||||||||||||||
| Deposited By: | Carcereri, Daniel | ||||||||||||||||||||||||||||
| Deposited On: | 02 Dec 2024 11:16 | ||||||||||||||||||||||||||||
| Last Modified: | 02 Dec 2024 11:16 |
Repository Staff Only: item control page