from train import Train from test import Test from configuration import DatasetName, ModelArch from pca_utility import PCAUtility if __name__ == '__main__': '''use the pretrained model''' tester = Test() tester.test_model(ds_name=DatasetName.w300, pretrained_model_path='./pre_trained_models/ASMNet/ASM_loss/ASMNet_300W_ASMLoss.h5') '''training model from scratch''' # pretrain prerequisites # 1- PCA calculation: pca_calc = PCAUtility() pca_calc.create_pca_from_npy(dataset_name=DatasetName.w300, labels_npy_path='./data/w300/normalized_labels/', pca_percentages=90) # Train: trainer = Train(arch=ModelArch.ASMNet, dataset_name=DatasetName.w300, save_path='./', asm_accuracy=90)