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A Keras/Tensorflow compatible image data generator for creating balanced batches

Project description

kerasgen

Latest PyPI version DOI

A Keras/Tensorflow compatible image data generator for creating balanced batches. This datagenerator is compatible with TripletLoss as it guarantees the existence of postive pairs in every batch.

Installation

pip install kerasgen

Usage

from kerasgen.balanced_image_dataset import balanced_image_dataset_from_directory

train_ds = balanced_image_dataset_from_directory(
    directory, num_classes_per_batch=2,
    num_images_per_class=5, image_size=(256, 256),
    validation_split=0.2, subset='training', seed=555,
    safe_triplet=True)

val_ds = balanced_image_dataset_from_directory(
    directory, num_classes_per_batch=2,
    num_images_per_class=5, image_size=(256, 256),
    validation_split=0.2, subset='validation', seed=555,
    safe_triplet=True)

Generates a balanced per batch tf.data.Dataset from image files in a directory.

Your directory structure should be:

main_directory/
...class_a/
......a_image_1.jpg
......a_image_2.jpg
...class_b/
......b_image_1.jpg
......b_image_2.jpg

Behind the scenes, this API creates a different dataset for every class and by using weighted random sampling, a number of classes is drawn (num_classes_per_batch) and a specific number of images is selected from every choosen class (num_images_per_class) as long as there are enough samples from this class.

If there is no enough samples remaining from the choosen class, it is skipped and another class is choosen (This behaviour can be disabled and we indefinitely repeat the datasets)

Setting safe_triplet to False (Default) makes sure that every image is seen exactly one time per epoch but it does not guarantee a fixed num_classes_per_batch or num_images_per_class in later batches.

Setting safe_triplet to True does not guarantee that every epoch will include all different samples from the dataset. But as sampling weighted per class, every epoch will include a very high percentage of the dataset and should approach 100% as dataset size increases. This however guarantee that both num_classes_per_batch and num_images_per_class are fixed for all batches including later ones.

If you are to use this generator with TripletLoss, your should either:

  • Set safe_triplet to True
  • Keep safe_triplet default False value but be careful with choosing the batch_size so you do not end up with a last batch containing a single class (or a single sample)

Batch size is calculated by multiplying num_classes_per_batch and num_images_per_class.

Requirements

  • Tensorflow >= 2.9
  • Numpy >= 1.19

Compatible with


MIT

Authors

KerasGen was written by Mahmoud Bahaa

If you use this software, please cite it using the metadata from this CITATION.cff

Project details


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