Skip to content

Latest commit

 

History

History
13 lines (11 loc) · 804 Bytes

README.md

File metadata and controls

13 lines (11 loc) · 804 Bytes

Grayscale to RGB

Picking foraminifera samples is as important as tedious for bio-marine research. Given the fact that it is suitable for automation, our goal was to improve accuracy of those automated methods thanks to ways of processing images. Multiple new strategies were implemented: Averaged percentile, Gaussian, Clustering, Weighted Clustering. Starting from 16 different images of the same sample we used them to create a single RGB image to later train a CNN and compare our new accuracy results with the one originally implemented. Even though our methods were not as accurate as Percentile by themselves, using ensemble strategies we were able to marginally increase the overall accuracy.

You can read Relazione.pdf for further information about our project.