Very High-Resolution Forest Mapping with TanDEM-X InSAR Data and Self-Supervised Learning
Jos\'e-Luis Bueso-Bello, Benjamin Chauvel, Daniel Carcereri, Philipp, Posovszky, Pietro Milillo, Jennifer Ruiz, Juan-Carlos Fern\'andez-Diaz,, Carolina Gonz\'alez, Michele Martone, Ronny H\"ansch, Paola Rizzoli

TL;DR
This paper presents a self-supervised learning framework for high-resolution forest mapping using TanDEM-X InSAR data, significantly reducing the need for extensive labeled datasets and improving accuracy over traditional supervised methods.
Contribution
It introduces a novel self-supervised approach tailored for very high-resolution TanDEM-X data, enabling effective forest mapping with limited labeled samples.
Findings
Self-supervised learning improves classification accuracy over fully-supervised methods.
The framework successfully maps forests at 6 m resolution with minimal labeled data.
Application to Amazon rainforest demonstrates real-world effectiveness.
Abstract
Deep learning models have shown encouraging capabilities for mapping accurately forests at medium resolution with TanDEM-X interferometric SAR data. Such models, as most of current state-of-the-art deep learning techniques in remote sensing, are trained in a fully-supervised way, which requires a large amount of labeled data for training and validation. In this work, our aim is to exploit the high-resolution capabilities of the TanDEM-X mission to map forests at 6 m. The goal is to overcome the intrinsic limitations posed by midresolution products, which affect, e.g., the detection of narrow roads within vegetated areas and the precise delineation of forested regions contours. To cope with the lack of extended reliable reference datasets at such a high resolution, we investigate self-supervised learning techniques for extracting highly informative representations from the input…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Landslides and related hazards · Soil erosion and sediment transport
