Submitted:
30 January 2026
Posted:
02 February 2026
You are already at the latest version
Abstract
Keywords:
1. Introduction
- How effectively can the deep learning (U-Net) model detect post-storm landslides using Sentinel-2–based vegetation change and persistence metrics?
- Which factors most limit detection accuracy and how can these be mitigated?
- How can we set up a pipeline for general expansion of the study area?
2. Materials and Methods
3. Results
3.1. Model Performance
3.3. Identification of Systematic Errors
False Positives
Missed Detections
3.3. Up Scaling the Model
4. Discussion
4.1. Model Performance
4.2. Systematic Errors
4.3. Scaling Up
4.4. Future Work and Operational Implications
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| ALADIM | Automatic Landslide Detection Model |
| API | Application Programming Interface |
| EMS | Emergency Management Services |
| CNN | Convolutional Neural Network |
| dNDVI | Change in Normalized Difference Vegetation Index |
| ESA | European Space Agency |
| GEE | Google Earth Engine |
| GPU | Graphics Processing Unit |
| NVE | Norges vassdrags- og energidirektorat |
| NSDB | Nationale Skred Database |
| OBIA | Object-Based Image Analysis |
| OBE | Object-Based Evaluation |
| RGB | Red-Green-Blue Composite |
| SAR | Synthetic Aperture Radar |
| SCL | Scene Classification Layer |
| SR | Surface Reflectance |
| SVV | Statens vegvesen |
| U-Net | U-Net Convolutional Neural Network |
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| Results | Jølster | Hans |
|---|---|---|
| Total Landslides | 120 | 60 |
| At least 1 pixel overlap | 79 | 23 |
| At least 20% pixel overlap | 63 | 16 |
| Precision (%) | 53 | 35 |
| Recall (%) | 53 | 44 |
| Accuracy (%) | 99.8 | 99.9 |
| F1-score | 53 | 38.9 |
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