Faults, fractures, and folds play a critical role in controlling mineralization and understanding regional structural frameworks.
With GeoSense™, fault detection no longer relies on field-based surveys or single-layer satellite images—it’s now automated using fused radar and elevation data.
Technical Workflow
Preprocessing SAR and DEM layers: Prepares synthetic aperture radar and digital elevation data for integrated analysis.
Slope, curvature, and drainage anomaly extraction: Identifies topographic patterns that often align with fault and fracture zones.
AI-based ridge line and fracture clustering: Applies machine learning to group structural trends across vast terrains.
Generating fault orientation and length statistics: Quantifies geometry of mapped faults for structural modeling and mineral targeting.
Exporting to GIS platforms: Outputs shapefiles and layers for seamless overlay with geological and geochemical data.
Case Study: Rift Basin Mapping in Africa
GeoSense™ was deployed to support structural mapping in a remote African rift basin.
Using open-source Sentinel-1 and SRTM datasets, the system identified and mapped over 300 individual fault segments.
This automated approach reduced dependence on field-based validation efforts by over 80 percent.
GeoSense™ streamlines structural interpretation by fusing elevation and radar signals—bringing speed, consistency, and geospatial intelligence to fault mapping.
Key Takeaways
Automates structural framework detection across large areas using AI and remote sensing fusion.
Significantly reduces reliance on field teams and manual image interpretation for fault identification.
Delivers georeferenced fault shapefiles compatible with all major GIS and exploration tools.