The project focuses on Medical MNIST analysis. Models for image classification are developed, the results are looked into as well as some models performance visualisations are presented.
- Primary notebook - dataset analysis and preparation along with model training
- Results - metrics, lerning curves, violin plots, ROC and PR curves, images from outside the dataset
- Occlusion sensitivity - occlusion sensitivity for different models
- t-SNE visualisations - mosaics, scatter plots and visualisations using RasterFairy
Average image of each class:
ROC and PR curves for best model - different image sizes:
Best model occlusion sensitivity for each class example:
colored t-SNE mosaic with images: