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Iterator capable of reading images from a directory on disk.
Inherits From: Iterator
tf.keras.preprocessing.image.DirectoryIterator( directory, image_data_generator, target_size=(256, 256), color_mode='rgb', classes=None, class_mode='categorical', batch_size=32, shuffle=True, seed=None, data_format=None, save_to_dir=None, save_prefix='', save_format='png', follow_links=False, subset=None, interpolation='nearest', dtype=None )
Arguments | |
---|---|
directory | Path to the directory to read images from. Each subdirectory in this directory will be considered to contain images from one class, or alternatively you could specify class subdirectories via the classes argument. |
image_data_generator | Instance of ImageDataGenerator to use for random transformations and normalization. |
target_size | tuple of integers, dimensions to resize input images to. |
color_mode | One of "rgb" , "rgba" , "grayscale" . Color mode to read images. |
classes | Optional list of strings, names of subdirectories containing images from each class (e.g. ["dogs", "cats"] ). It will be computed automatically if not set. |
class_mode | Mode for yielding the targets: "binary" : binary targets (if there are only two classes), "categorical" : categorical targets, "sparse" : integer targets, "input" : targets are images identical to input images (mainly used to work with autoencoders), None : no targets get yielded (only input images are yielded). |
batch_size | Integer, size of a batch. |
shuffle | Boolean, whether to shuffle the data between epochs. |
seed | Random seed for data shuffling. |
data_format | String, one of channels_first , channels_last . |
save_to_dir | Optional directory where to save the pictures being yielded, in a viewable format. This is useful for visualizing the random transformations being applied, for debugging purposes. |
save_prefix | String prefix to use for saving sample images (if save_to_dir is set). |
save_format | Format to use for saving sample images (if save_to_dir is set). |
subset | Subset of data ("training" or "validation" ) if validation_split is set in ImageDataGenerator. |
interpolation | Interpolation method used to resample the image if the target size is different from that of the loaded image. Supported methods are "nearest", "bilinear", and "bicubic". If PIL version 1.1.3 or newer is installed, "lanczos" is also supported. If PIL version 3.4.0 or newer is installed, "box" and "hamming" are also supported. By default, "nearest" is used. |
dtype | Dtype to use for generated arrays. |
Attributes | |
---|---|
filepaths | List of absolute paths to image files |
labels | Class labels of every observation |
sample_weight |
next
next()
For python 2.x.
The next batch.
on_epoch_end
on_epoch_end()
reset
reset()
set_processing_attrs
set_processing_attrs( image_data_generator, target_size, color_mode, data_format, save_to_dir, save_prefix, save_format, subset, interpolation )
Sets attributes to use later for processing files into a batch.
image_data_generator: Instance of `ImageDataGenerator` to use for random transformations and normalization. target_size: tuple of integers, dimensions to resize input images to. color_mode: One of `"rgb"`, `"rgba"`, `"grayscale"`. Color mode to read images. data_format: String, one of `channels_first`, `channels_last`. save_to_dir: Optional directory where to save the pictures being yielded, in a viewable format. This is useful for visualizing the random transformations being applied, for debugging purposes. save_prefix: String prefix to use for saving sample images (if `save_to_dir` is set). save_format: Format to use for saving sample images (if `save_to_dir` is set). subset: Subset of data (`"training"` or `"validation"`) if validation_split is set in ImageDataGenerator. interpolation: Interpolation method used to resample the image if the target size is different from that of the loaded image. Supported methods are "nearest", "bilinear", and "bicubic". If PIL version 1.1.3 or newer is installed, "lanczos" is also supported. If PIL version 3.4.0 or newer is installed, "box" and "hamming" are also supported. By default, "nearest" is used.
__getitem__
__getitem__( idx )
__iter__
__iter__()
__len__
__len__()
allowed_class_modes
white_list_formats
© 2020 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r2.3/api_docs/python/tf/keras/preprocessing/image/DirectoryIterator