# An AI-ready remote sensing dataset for high-resolution forest disturbance mapping

**Authors:** Enmanuel Rodríguez-Paulino, Johannes Stoffels, Martin Schlerf, Achim Röder, Alexander Wagner, Thomas Udelhoven

PMC · DOI: 10.1038/s41597-026-07084-8 · 2026-03-26

## TL;DR

This paper introduces a high-resolution dataset for training AI to detect and classify forest disturbances like insect damage and windthrow in Europe.

## Contribution

The paper presents a deep learning-ready dataset with high-resolution imagery and labeled disturbance types for forest monitoring.

## Key findings

- The dataset contains 17,500 image patches with five spectral channels and detailed segmentation masks.
- A deep learning model achieved 88.2% overall accuracy in classifying forest disturbances.
- Near-infrared and object height channels were found to be most informative for classification.

## Abstract

Europe’s forests face increasing threats from natural disturbances such as insect outbreaks, pathogens, and windthrow, often aggravated by extreme weather events and followed by subsequent salvage logging. Monitoring these events at high spatial detail is essential for forest management and climate adaptation, yet many remain undetected when using medium-resolution satellite imagery, and manual reporting by authorities is time-consuming and inconsistent. Here we present a high-resolution, deep learning-ready dataset designed for the classification of forest disturbance types. It consists of ~17,500 image patches (500 × 500 pixels at 0.2 m resolution) derived from digital orthophotos of Rhineland-Palatinate, Germany. Each patch includes five channels (red, green, blue, near-infrared, and object height) and a segmentation mask with labeled disturbance classes such as bark beetle damage, clear-cuts, and windthrow. To demonstrate its utility, we apply a deep learning model and assess the contribution of individual channels through ablation analysis. The model achieved an overall accuracy of 88.2%, with near-infrared and object height identified as the most informative channels. The dataset offers a high-resolution resource for advancing deep learning-based forest disturbance monitoring.

## Full-text entities

- **Diseases:** crown condition (MESH:D020763), fire (MESH:D000092422)
- **Chemicals:** DOP (-)
- **Species:** Homo sapiens (human, species) [taxon 9606], Picea abies (Norway spruce, species) [taxon 3329], Pinus sylvestris (Scotch pine, species) [taxon 3349], Quercus robur (English oak, species) [taxon 38942], Fagus sylvatica (European beech, species) [taxon 28930], Quercus petraea (durmast oak, species) [taxon 38865]

## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/PMC13031536/full.md

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Source: https://tomesphere.com/paper/PMC13031536