Global Flood Susceptibility Map (GFSM)
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A globally harmonized flood susceptibility dataset at 30-meter resolution, produced using an XGBoost framework trained on multi-source geospatial data. Covers all major landmasses for localized flood exposure assessment.
GeoAI ML GEE HPC
BAM: Self-Supervised Burn Area Mapping
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BAM is a revolutionary, self-supervised machine learning framework designed for near-real-time mapping of wildfire burned areas globally. It bridges physics-based spectral analysis with data-driven ML refinement to eliminate reliance on manual training data, achieving robust 30-meter resolution mapping that resolves sub-pixel heterogeneity across diverse ecosystems and topographies.
GEE Python ML GeoAI
Flood Risk Analytics for Pakistan
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High-resolution (30m) flood susceptibility mapping and population exposure analysis for Pakistan, integrating ensemble machine learning with geospatial big data to support national disaster risk reduction.
GEE GeoAI ML Python
High-resolution Flood Susceptibility Mapping in Pakistan
Floods GeoAI ML GEE
Open-Sourced Google Earth Engine Projects Repository
GEE JavaScript Python Geospatial Analysis
Urbanization Effects on Terrestrial Carbon Storage in Pakistan
Geo-BigData Land Cover Change Carbon Storage Remote Sensing
30 Day Map Challenge 2023 Journey
ArcGIS Pro QGIS Google Earth Engine Geemap
LST, Urban Heat Island Effect, and UTFVI Analysis using Google Earth Engine and Landsat
GEE LST UHI UTFVI
Mastering Machine Learning based Land Use Classification with Python
Python ML Rasterio Scikit-learn
Land Cover & Carbon Storage Change Assessment
Nationwide study quantifying the impact of urbanization-driven land cover changes on terrestrial carbon storage in Pakistan from 1990 to 2020, using remote sensing and machine learning.
GEE GeoAI ML Python