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Few-shot-learning-based-breast-cancer-detection-using-multi-task-learning

Designed and trained a model to perform multi-tasks at the same time using a handful set of images

Datasets used:

  1. 'ICIAR' for 2 class classification
  2. 'BreaKHis' for primary and finegrain classifications

The motivation of the project work is to develop a model which is capable for learning multi tasks at the same instant of time using very few images for training.

The notebook named k_iciar_enetb0_m1_Multitask_Few_shot_Breakhis.ipynb contains code to train the base model on the ICIAR dataset for 2 classes (i.e. Benign and Malignant)

Model1.h5 is pretrained on the 'ICIAR'.

The jupyter notebook named git_mtl2_enetb0_m1_Multitask_Few_shot_Breakhis.ipynb contains codes for tuning and re-training the previously trained EfficientB0 on the BreaKHis dataset for 2 class (Primary) classification and 8 class (Finegrain) classification.

mtl2_enetb0_m1 folder contains Keras model which is trained on the BreaKHis for multi-tasking.

Comparison paper link

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Designed and trained a model to perform multi-tasks at the same time using a handful set of images

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