flow_from_directory to get the training set from a folder with the following structure:
train class1 class2 class3 ...
The generator is called as it follows:
train_generator = train_datagen.flow_from_directory( train_data_dir, target_size=(img_height, img_width), batch_size=32, class_mode='categorical')
I am not setting the argument
classes, but I was expecting to get the labels in alphabetical order.
classes: optional list of class subdirectories (e.g.
['dogs', 'cats']). Default: None. If not provided, the list of classes will be automatically inferred (and the order of the classes, which will map to the label indices, will be alphanumeric).
However, when I classify the training images (for checking which labels are being returned), I'm don't get any specific ordering. The training goes well (accuracy of ~85%), and there is a consistency with the output labels when classifying images from the same class.
How can I infer the labels numbers generated by
flow_from_directory and map them to the classes?