6

belos is my code to ensure that the folder has images, but tf.keras.preprocessing.image_dataset_from_directory returns no images found. What did I do wrong? Thanks.

DATASET_PATH = pathlib.Path('C:\\Users\\xxx\\Documents\\images')
image_count = len(list(DATASET_PATH.glob('.\\*.jpg')))
print(image_count)

output = 2715

batch_size = 4
img_height = 32
img_width = 32

train_ds = tf.keras.preprocessing.image_dataset_from_directory(
    DATASET_PATH.name,
    validation_split=0.8,
    subset="training",
    seed=123,
    image_size=(img_height, img_width),
    batch_size=batch_size)

output:

Found 0 files belonging to 0 classes.
Using 0 files for training.
Traceback (most recent call last):
  File ".\tensorDataPreProcessed.py", line 23, in <module>
    batch_size=batch_size)
  File "C:\Users\xxx\Anaconda3\envs\xxx\lib\site-packages\tensorflow\python\keras\preprocessing\image_dataset.py", line 200, in image_dataset_from_directory
    raise ValueError('No images found.')
ValueError: No images found.
8
  • When using image_dataset_from_directory you folders need to have subfolders for each of the classes, i.e. C:\\Users\\xxx\\Documents\\images\\class_1, C:\\Users\\xxx\\Documents\\images\\class_2, etc
    – NotAName
    Commented Jul 20, 2021 at 3:17
  • Hi @pavel, what if I only have one class? Do I still need to have a subfolder with class_1?
    – LLTeng
    Commented Jul 20, 2021 at 3:20
  • 1
    And what do you plan to do with 1 class? How do you plan to train the model? How will it calculate a loss? At the very least you need to have images of some category and images that do not belong to this category, i.e. "cars" and "not_cars".
    – NotAName
    Commented Jul 20, 2021 at 3:23
  • thanks for pointing that out. Yes. there will be 2 classes. Thanks
    – LLTeng
    Commented Jul 20, 2021 at 3:26
  • Also, I plan to create a DCGAN using one fo the class. Hence, my comment earlier.
    – LLTeng
    Commented Jul 20, 2021 at 3:26

2 Answers 2

12

There are two issues here, firstly image_dataset_from_directory requires subfolders for each of the classes within the directory. This way it can automatically identify and assign class labels to images.

So the standard folder structure for TF is:

data
|
|___train
|      |___class_1
|      |___class_2
|
|___validation
|      |___class_1
|      |___class_2
|
|___test(optional)
       |___class_1
       |___class_2

The other issue is that you are attempting to create a model using only one class which is not a way to go. The model needs to be able to differentiate between the class you are trying to generate using GAN but to do this it needs a sample of images that do not belong to this class.

2
  • I try to replicate transfert style from this exemple tensorflow.org/tutorials/generative/style_transfer We don't need 2 class for trainning only load 2 picture to merge it. Does I have to create a "class" style dirctory where my class will be for exemple "style" and "target" ?? Commented Sep 28, 2022 at 13:13
  • Unless, of course, you're doing unsupervised learning, such as VACs. Commented Jan 8, 2023 at 14:20
0

If you're doing unsupervised learning and you genuinely only have one class then there is an argument for tf.keras.utils.image_dataset_from_directory called labels:

NOTE: If you're unsure whether this applies to your problem you should become sure first. Just copying this solution without knowing if it's what your problem needs is a bad idea.

From the docs:

labels: Either "inferred" (labels are generated from the directory structure), None (no labels), or a list/tuple of integer labels of the same size as the number of image files found in the directory. Labels should be sorted according to the alphanumeric order of the image file paths (obtained via os.walk(directory) in Python).

So you can set labels to None and it'll import all images into 1 class.

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