Automated Fossil Species Identification from Micro-CT Scans Using Deep Learning
KVL Staff on Project
Abdelghafour Halimi
abdelghafour.halimi@kaust.edu.sa
Didier Barradas-Bautista
didier.barradas@kaust.edu.sa
Ronell Sicat
ronell.sicat@kaust.edu.sa
Building 1, Level 0, Office 0125
Collaborators
Ali Alibrahim
ali.alibrahim@kaust.edu.sa
Abdulkader M. Afifi
abdulkader.alafifi@kaust.edu.sa
Foraminifera are microscopic organisms whose fossilized shells provide insight into the history of Earth's climate. Our ForamDeepSlice framework uses deep learning to automatically classify 12 foraminifera species from micro-CT scans with unprecedented accuracy.
🔬 Research Visualization The workflow diagram below illustrates our comprehensive deep learning pipeline for automated foraminifera classification. The paper entitled “ForamDeepSlice: A High-Accuracy Deep Learning Framework for Foraminifera Species Classification from 2D Micro-CT Slices” is available for download and review here.
🎯 KVL's Contribution KVL's visualization scientists Abdelghafour Halimi, Didier Barradas-Bautista, and Ronell Sicat contributed significantly to the development of the ForamDeepSlice framework through: