Submitted:
27 August 2025
Posted:
29 August 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Methods
2.1. Satellite Data Acquisition and Preprocessing
2.2. Pixel-Based Methods
2.2.1. Spectral Indices
2.2.2. Spectral Similarity-Based Techniques
2.2.3. Unsupervised Classification
2.3. Sub-pixel methods
2.3.1. Spectral Unmixing
2.4. SAR Interferometry (InSAR) for geological mapping
2.5. Field Campaigns and Mineralogical Analysis
2.6. Geographical Information Systems (GIS) and Multi-Layer Analysis
3. Results
3.1. Overview of Remote Sensing Applications in the Mediterranean
3.2. Spectral Libraries: Use and Impact in Mediterranean Geological Mapping
3.2.1. Standard and Custom Spectral Libraries
3.3. Comparative Summary of Pixel-Based and Sub-Pixel Methods Effectiveness
4. Discussion
4.1. Implication for Mining Exploration
4.2. Challenges and Future Directions
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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| Satellite | Sensor | Spatial resolution | Temporal resolution | Type | Key Features | Application |
|---|---|---|---|---|---|---|
| Sentinel-2 | MSI | 10–60 m | 5 days Multispectral | 13 bands, red-edge, high revisit rate | Lithological | alteration mapping, vegetation, archaeological analysis |
| Sentinel-1 | C-band sensor | 10 m | 6–12 days Radar (SAR) | Coherence-based analysis, all-weather capability | Forest classification, hydrothermal alteration detection, ground deformation monitoring | |
| Landsat 8 | OLI | 30 m | 16 days Multispectral | Long-term archive, mineral | land cover monitoring | Hydrothermal mapping, lithological discrimination |
| Terra | ASTER (VNIR, SWIR, TIR) | 15–90 m | 16 days Multispectral + Thermal | Thermal bands, mineral indices, DEM support | Hydrothermal zones, geothermal mapping | |
| Terra/Aqua | MODIS | 250 m–1 km | Daily Multispectral + Thermal | Daily coverage, LST products | Temporal geothermal studies | |
| EO-1 | Hyperion | 30 m | 16 days Hyperspectral | 220 bands, VNIR-SWIR, fine spectral resolution | Land use/cover classification, mineral mapping | |
| PRISMA | HYC + PAN | 30 m | 7 days Hyperspectral | 239 bands, atmospheric correction, surface reflectance | Hydrothermal mapping, archaeological | mineral studies |
| EnMAP | HIS | 30 m | 4 days Hyperspectral | 230 bands, global coverage, environmental focus | Geological | environmental mapping |
| Sentinel-2 + Ground Data | MSI + Gamma-ray | 10–60 m | 5 days Multispectral + gamma-ray | Integrated classification, SVM | RF algorithms | Lithological mapping |
| Landsat + DEM | OLI + DTM | 30 m | N/A Multispectral + Topographic | Integrated analysis, terrain enhancement | Alteration | mineral target detection |
| Sentinel-1 + Landsat | C-band sensor + OLI | 10–30 m | N/A Integrated | Unsupervised ML (DBSCAN, fuzzy C-means) | Prospectivity mapping | |
| ALOS, TerraSAR-X, Sentinel-1 | PALSAR (L-band), X-band, C-band sensor | 10 m | N/A Radar Interferometry | SBAS, PSInSAR, MTInSAR, advanced deformation tracking | Volcanic, tectonic, and coastal subsidence monitoring |
| Satellite | Sensor | Processing Method | Spectral Library Used |
|---|---|---|---|
| Sentinel-2 | MSI | Pixel-based (spectral indices, SVM, RF) | Customized |
| Sentinel-1 | C-band sensor | SAR Interferometry (SBAS, PSInSAR) | N/A |
| Landsat 8 | OLI | Pixel-based (spectral indices, PCA) | Customized |
| Terra | ASTER (VNIR, SWIR, TIR) | Pixel-based (spectral indices, PCA) | Customized |
| Terra/Aqua | MODIS | Pixel-based (thermal time-series) | N/A |
| EO-1 | Hyperion | Sub-pixel (MESMA, spectral libraries) | USGS |
| PRISMA | HYC + PAN | Sub-pixel (spectral unmixing, indices) | USGS, Customized |
| EnMAP | HIS | Sub-pixel (unmixing, RTM models) | USGS, Customized |
| Sentinel-2 + Ground Data | MSI + Gamma-ray | Pixel-based (SVM, RF) | Customized |
| Landsat + DEM | OLI + DTM | Pixel-based (spectral indices) | Customized |
| Sentinel-1 + Landsat | C-band sensor + OLI | Mixed (SAR + DBSCAN, fuzzy C-means) | Customized |
| ALOS, TerraSAR-X, Sentinel-1 | PALSAR (L-band), X-band, C-band sensor | SAR Interferometry (SBAS, MTInSAR) | N/A |
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