image_dataset_from_directory
functiontf_keras.utils.image_dataset_from_directory(
directory,
labels="inferred",
label_mode="int",
class_names=None,
color_mode="rgb",
batch_size=32,
image_size=(256, 256),
shuffle=True,
seed=None,
validation_split=None,
subset=None,
interpolation="bilinear",
follow_links=False,
crop_to_aspect_ratio=False,
**kwargs
)
Generates a tf.data.Dataset
from image files in a directory.
If your directory structure is:
main_directory/
...class_a/
......a_image_1.jpg
......a_image_2.jpg
...class_b/
......b_image_1.jpg
......b_image_2.jpg
Then calling image_dataset_from_directory(main_directory,
labels='inferred')
will return a tf.data.Dataset
that yields batches of
images from the subdirectories class_a
and class_b
, together with labels
0 and 1 (0 corresponding to class_a
and 1 corresponding to class_b
).
Supported image formats: .jpeg
, .jpg
, .png
, .bmp
, .gif
.
Animated gifs are truncated to the first frame.
Arguments
labels
is "inferred"
, it should contain
subdirectories, each containing images for a class.
Otherwise, the directory structure is ignored."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).labels
. Options are:"int"
: means that the labels are encoded as integers
(e.g. for sparse_categorical_crossentropy
loss)."categorical"
means that the labels are
encoded as a categorical vector
(e.g. for categorical_crossentropy
loss)."binary"
means that the labels (there can be only 2)
are encoded as float32
scalars with values 0 or 1
(e.g. for binary_crossentropy
).None
(no labels).labels
is "inferred"
.
This is the explicit list of class names
(must match names of subdirectories). Used to control the order
of the classes (otherwise alphanumerical order is used)."grayscale"
, "rgb"
, "rgba"
.
Defaults to "rgb"
. Whether the images will be converted to
have 1, 3, or 4 channels.None
, the data will not be batched
(the dataset will yield individual samples). Defaults to 32.(height, width)
.
Since the pipeline processes batches of images that must all have
the same size, this must be provided. Defaults to (256, 256)
.True
.
If set to False
, sorts the data in alphanumeric order."training"
, "validation"
, or "both"
.
Only used if validation_split
is set.
When subset="both"
, the utility returns a tuple of two datasets
(the training and validation datasets respectively)."bilinear"
.
Supports "bilinear"
, "nearest"
, "bicubic"
, "area"
,
"lanczos3"
, "lanczos5"
, "gaussian"
, "mitchellcubic"
.False
.True
, resize the images without aspect
ratio distortion. When the original aspect ratio differs from the
target aspect ratio, the output image will be cropped so as to
return the largest possible window in the image
(of size image_size
) that matches the target aspect ratio. By
default (crop_to_aspect_ratio=False
), aspect ratio may not be
preserved.Returns
A tf.data.Dataset
object.
label_mode
is None
, it yields float32
tensors of shape
(batch_size, image_size[0], image_size[1], num_channels)
,
encoding images (see below for rules regarding num_channels
).(images, labels)
, where images
has
shape (batch_size, image_size[0], image_size[1], num_channels)
,
and labels
follows the format described below.Rules regarding labels format:
label_mode
is "int"
, the labels are an int32
tensor of shape
(batch_size,)
.label_mode
is "binary"
, the labels are a float32
tensor of
1s and 0s of shape (batch_size, 1)
.label_mode
is "categorical"
, the labels are a float32
tensor
of shape (batch_size, num_classes)
, representing a one-hot
encoding of the class index.Rules regarding number of channels in the yielded images:
color_mode
is "grayscale"
,
there's 1 channel in the image tensors.color_mode
is "rgb"
,
there are 3 channels in the image tensors.color_mode
is "rgba"
,
there are 4 channels in the image tensors.load_img
functiontf_keras.utils.load_img(
path,
grayscale=False,
color_mode="rgb",
target_size=None,
interpolation="nearest",
keep_aspect_ratio=False,
)
Loads an image into PIL format.
Usage:
image = tf.keras.utils.load_img(image_path)
input_arr = tf.keras.utils.img_to_array(image)
input_arr = np.array([input_arr]) # Convert single image to a batch.
predictions = model.predict(input_arr)
Arguments
color_mode="grayscale"
."grayscale"
, "rgb"
, "rgba"
. Default: "rgb"
.
The desired image format.None
(default to original size) or tuple of ints
(img_height, img_width)
."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.Returns
A PIL Image instance.
Raises
img_to_array
functiontf_keras.utils.img_to_array(img, data_format=None, dtype=None)
Converts a PIL Image instance to a Numpy array.
Usage:
from PIL import Image
img_data = np.random.random(size=(100, 100, 3))
img = tf.keras.utils.array_to_img(img_data)
array = tf.keras.utils.image.img_to_array(img)
Arguments
"channels_first"
or
"channels_last"
. None means the global
setting tf.keras.backend.image_data_format()
is used (unless you
changed it, it uses "channels_last"
). Defaults to None
.tf.keras.backend.floatx()
to be used (unless you changed it, it
uses "float32"
). Defaults to None
.Returns
A 3D Numpy array.
Raises
img
or data_format
is passed.save_img
functiontf_keras.utils.save_img(
path, x, data_format=None, file_format=None, scale=True, **kwargs
)
Saves an image stored as a Numpy array to a path or file object.
Arguments
"channels_first"
or
"channels_last"
.[0, 255]
.PIL.Image.save()
.