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This tutorial demonstrates data augmentation: a technique to increase the diversity of your training set by applying random (but realistic) transformations, such as image rotation.
You will learn how to apply data augmentation in two ways:
tf.keras.layers.Resizing
, tf.keras.layers.Rescaling
, tf.keras.layers.RandomFlip
, and tf.keras.layers.RandomRotation
.tf.image
methods, such as tf.image.flip_left_right
, tf.image.rgb_to_grayscale
, tf.image.adjust_brightness
, tf.image.central_crop
, and tf.image.stateless_random*
.import matplotlib.pyplot as plt
import numpy as np
import tensorflow as tf
import tensorflow_datasets as tfds
from tensorflow.keras import layers
This tutorial uses the tf_flowers dataset. For convenience, download the dataset using TensorFlow Datasets. If you would like to learn about other ways of importing data, check out the load images tutorial.
(train_ds, val_ds, test_ds), metadata = tfds.load(
'tf_flowers',
split=['train[:80%]', 'train[80%:90%]', 'train[90%:]'],
with_info=True,
as_supervised=True,
)
The flowers dataset has five classes.
num_classes = metadata.features['label'].num_classes
print(num_classes)
Let's retrieve an image from the dataset and use it to demonstrate data augmentation.
get_label_name = metadata.features['label'].int2str
image, label = next(iter(train_ds))
_ = plt.imshow(image)
_ = plt.title(get_label_name(label))
You can use the Keras preprocessing layers to resize your images to a consistent shape (with tf.keras.layers.Resizing
), and to rescale pixel values (with tf.keras.layers.Rescaling
).
IMG_SIZE = 180
resize_and_rescale = tf.keras.Sequential([
layers.Resizing(IMG_SIZE, IMG_SIZE),
layers.Rescaling(1./255)
])
Note: The rescaling layer above standardizes pixel values to the [0, 1]
range. If instead you wanted it to be [-1, 1]
, you would write tf.keras.layers.Rescaling(1./127.5, offset=-1)
.
You can visualize the result of applying these layers to an image.
result = resize_and_rescale(image)
_ = plt.imshow(result)
Verify that the pixels are in the [0, 1]
range:
print("Min and max pixel values:", result.numpy().min(), result.numpy().max())
You can use the Keras preprocessing layers for data augmentation as well, such as tf.keras.layers.RandomFlip
and tf.keras.layers.RandomRotation
.
Let's create a few preprocessing layers and apply them repeatedly to the same image.
data_augmentation = tf.keras.Sequential([
layers.RandomFlip("horizontal_and_vertical"),
layers.RandomRotation(0.2),
])
# Add the image to a batch.
image = tf.cast(tf.expand_dims(image, 0), tf.float32)
plt.figure(figsize=(10, 10))
for i in range(9):
augmented_image = data_augmentation(image)
ax = plt.subplot(3, 3, i + 1)
plt.imshow(augmented_image[0])
plt.axis("off")
There are a variety of preprocessing layers you can use for data augmentation including tf.keras.layers.RandomContrast
, tf.keras.layers.RandomCrop
, tf.keras.layers.RandomZoom
, and others.
There are two ways you can use these preprocessing layers, with important trade-offs.
model = tf.keras.Sequential([
# Add the preprocessing layers you created earlier.
resize_and_rescale,
data_augmentation,
layers.Conv2D(16, 3, padding='same', activation='relu'),
layers.MaxPooling2D(),
# Rest of your model.
])
There are two important points to be aware of in this case:
Data augmentation will run on-device, synchronously with the rest of your layers, and benefit from GPU acceleration.
When you export your model using model.save
, the preprocessing layers will be saved along with the rest of your model. If you later deploy this model, it will automatically standardize images (according to the configuration of your layers). This can save you from the effort of having to reimplement that logic server-side.
Note: Data augmentation is inactive at test time so input images will only be augmented during calls to Model.fit
(not Model.evaluate
or Model.predict
).
aug_ds = train_ds.map(
lambda x, y: (resize_and_rescale(x, training=True), y))
With this approach, you use Dataset.map
to create a dataset that yields batches of augmented images. In this case:
Dataset.prefetch
, shown below.Model.save
. You will need to attach them to your model before saving it or reimplement them server-side. After training, you can attach the preprocessing layers before export.You can find an example of the first option in the Image classification tutorial. Let's demonstrate the second option here.
Configure the training, validation, and test datasets with the Keras preprocessing layers you created earlier. You will also configure the datasets for performance, using parallel reads and buffered prefetching to yield batches from disk without I/O become blocking. (Learn more dataset performance in the Better performance with the tf.data API guide.)
Note: Data augmentation should only be applied to the training set.
batch_size = 32
AUTOTUNE = tf.data.AUTOTUNE
def prepare(ds, shuffle=False, augment=False):
# Resize and rescale all datasets.
ds = ds.map(lambda x, y: (resize_and_rescale(x), y),
num_parallel_calls=AUTOTUNE)
if shuffle:
ds = ds.shuffle(1000)
# Batch all datasets.
ds = ds.batch(batch_size)
# Use data augmentation only on the training set.
if augment:
ds = ds.map(lambda x, y: (data_augmentation(x, training=True), y),
num_parallel_calls=AUTOTUNE)
# Use buffered prefetching on all datasets.
return ds.prefetch(buffer_size=AUTOTUNE)
train_ds = prepare(train_ds, shuffle=True, augment=True)
val_ds = prepare(val_ds)
test_ds = prepare(test_ds)
For completeness, you will now train a model using the datasets you have just prepared.
The Sequential model consists of three convolution blocks (tf.keras.layers.Conv2D
) with a max pooling layer (tf.keras.layers.MaxPooling2D
) in each of them. There's a fully-connected layer (tf.keras.layers.Dense
) with 128 units on top of it that is activated by a ReLU activation function ('relu'
). This model has not been tuned for accuracy (the goal is to show you the mechanics).
model = tf.keras.Sequential([
layers.Conv2D(16, 3, padding='same', activation='relu'),
layers.MaxPooling2D(),
layers.Conv2D(32, 3, padding='same', activation='relu'),
layers.MaxPooling2D(),
layers.Conv2D(64, 3, padding='same', activation='relu'),
layers.MaxPooling2D(),
layers.Flatten(),
layers.Dense(128, activation='relu'),
layers.Dense(num_classes)
])
Choose the tf.keras.optimizers.Adam
optimizer and tf.keras.losses.SparseCategoricalCrossentropy
loss function. To view training and validation accuracy for each training epoch, pass the metrics
argument to Model.compile
.
model.compile(optimizer='adam',
loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
metrics=['accuracy'])
Train for a few epochs:
epochs=5
history = model.fit(
train_ds,
validation_data=val_ds,
epochs=epochs
)
loss, acc = model.evaluate(test_ds)
print("Accuracy", acc)
You can also create custom data augmentation layers.
This section of the tutorial shows two ways of doing so:
tf.keras.layers.Lambda
layer. This is a good way to write concise code.Both layers will randomly invert the colors in an image, according to some probability.
def random_invert_img(x, p=0.5):
if tf.random.uniform([]) < p:
x = (255-x)
else:
x
return x
def random_invert(factor=0.5):
return layers.Lambda(lambda x: random_invert_img(x, factor))
random_invert = random_invert()
plt.figure(figsize=(10, 10))
for i in range(9):
augmented_image = random_invert(image)
ax = plt.subplot(3, 3, i + 1)
plt.imshow(augmented_image[0].numpy().astype("uint8"))
plt.axis("off")
Next, implement a custom layer by subclassing:
class RandomInvert(layers.Layer):
def __init__(self, factor=0.5, **kwargs):
super().__init__(**kwargs)
self.factor = factor
def call(self, x):
return random_invert_img(x)
_ = plt.imshow(RandomInvert()(image)[0])
Both of these layers can be used as described in options 1 and 2 above.
The above Keras preprocessing utilities are convenient. But, for finer control, you can write your own data augmentation pipelines or layers using tf.data
and tf.image
. (You may also want to check out TensorFlow Addons Image: Operations and TensorFlow I/O: Color Space Conversions.)
Since the flowers dataset was previously configured with data augmentation, let's reimport it to start fresh:
(train_ds, val_ds, test_ds), metadata = tfds.load(
'tf_flowers',
split=['train[:80%]', 'train[80%:90%]', 'train[90%:]'],
with_info=True,
as_supervised=True,
)
Retrieve an image to work with:
image, label = next(iter(train_ds))
_ = plt.imshow(image)
_ = plt.title(get_label_name(label))
Let's use the following function to visualize and compare the original and augmented images side-by-side:
def visualize(original, augmented):
fig = plt.figure()
plt.subplot(1,2,1)
plt.title('Original image')
plt.imshow(original)
plt.subplot(1,2,2)
plt.title('Augmented image')
plt.imshow(augmented)
Flip an image either vertically or horizontally with tf.image.flip_left_right
:
flipped = tf.image.flip_left_right(image)
visualize(image, flipped)
You can grayscale an image with tf.image.rgb_to_grayscale
:
grayscaled = tf.image.rgb_to_grayscale(image)
visualize(image, tf.squeeze(grayscaled))
_ = plt.colorbar()
Saturate an image with tf.image.adjust_saturation
by providing a saturation factor:
saturated = tf.image.adjust_saturation(image, 3)
visualize(image, saturated)
Change the brightness of image with tf.image.adjust_brightness
by providing a brightness factor:
bright = tf.image.adjust_brightness(image, 0.4)
visualize(image, bright)
Crop the image from center up to the image part you desire using tf.image.central_crop
:
cropped = tf.image.central_crop(image, central_fraction=0.5)
visualize(image, cropped)
Rotate an image by 90 degrees with tf.image.rot90
:
rotated = tf.image.rot90(image)
visualize(image, rotated)
Warning: There are two sets of random image operations: tf.image.random*
and tf.image.stateless_random*
. Using tf.image.random*
operations is strongly discouraged as they use the old RNGs from TF 1.x. Instead, please use the random image operations introduced in this tutorial. For more information, refer to Random number generation.
Applying random transformations to the images can further help generalize and expand the dataset. The current tf.image
API provides eight such random image operations (ops):
tf.image.stateless_random_brightness
tf.image.stateless_random_contrast
tf.image.stateless_random_crop
tf.image.stateless_random_flip_left_right
tf.image.stateless_random_flip_up_down
tf.image.stateless_random_hue
tf.image.stateless_random_jpeg_quality
tf.image.stateless_random_saturation
These random image ops are purely functional: the output only depends on the input. This makes them simple to use in high performance, deterministic input pipelines. They require a seed
value be input each step. Given the same seed
, they return the same results independent of how many times they are called.
Note: seed
is a Tensor
of shape (2,)
whose values are any integers.
In the following sections, you will:
Randomly change the brightness of image
using tf.image.stateless_random_brightness
by providing a brightness factor and seed
. The brightness factor is chosen randomly in the range [-max_delta, max_delta)
and is associated with the given seed
.
for i in range(3):
seed = (i, 0) # tuple of size (2,)
stateless_random_brightness = tf.image.stateless_random_brightness(
image, max_delta=0.95, seed=seed)
visualize(image, stateless_random_brightness)
Randomly change the contrast of image
using tf.image.stateless_random_contrast
by providing a contrast range and seed
. The contrast range is chosen randomly in the interval [lower, upper]
and is associated with the given seed
.
for i in range(3):
seed = (i, 0) # tuple of size (2,)
stateless_random_contrast = tf.image.stateless_random_contrast(
image, lower=0.1, upper=0.9, seed=seed)
visualize(image, stateless_random_contrast)
Randomly crop image
using tf.image.stateless_random_crop
by providing target size
and seed
. The portion that gets cropped out of image
is at a randomly chosen offset and is associated with the given seed
.
for i in range(3):
seed = (i, 0) # tuple of size (2,)
stateless_random_crop = tf.image.stateless_random_crop(
image, size=[210, 300, 3], seed=seed)
visualize(image, stateless_random_crop)
Let's first download the image dataset again in case they are modified in the previous sections.
(train_datasets, val_ds, test_ds), metadata = tfds.load(
'tf_flowers',
split=['train[:80%]', 'train[80%:90%]', 'train[90%:]'],
with_info=True,
as_supervised=True,
)
Next, define a utility function for resizing and rescaling the images. This function will be used in unifying the size and scale of images in the dataset:
def resize_and_rescale(image, label):
image = tf.cast(image, tf.float32)
image = tf.image.resize(image, [IMG_SIZE, IMG_SIZE])
image = (image / 255.0)
return image, label
Let's also define the augment
function that can apply the random transformations to the images. This function will be used on the dataset in the next step.
def augment(image_label, seed):
image, label = image_label
image, label = resize_and_rescale(image, label)
image = tf.image.resize_with_crop_or_pad(image, IMG_SIZE + 6, IMG_SIZE + 6)
# Make a new seed.
new_seed = tf.random.split(seed, num=1)[0, :]
# Random crop back to the original size.
image = tf.image.stateless_random_crop(
image, size=[IMG_SIZE, IMG_SIZE, 3], seed=seed)
# Random brightness.
image = tf.image.stateless_random_brightness(
image, max_delta=0.5, seed=new_seed)
image = tf.clip_by_value(image, 0, 1)
return image, label
Create a tf.data.experimental.Counter
object (let's call it counter
) and Dataset.zip
the dataset with (counter, counter)
. This will ensure that each image in the dataset gets associated with a unique value (of shape (2,)
) based on counter
which later can get passed into the augment
function as the seed
value for random transformations.
# Create a `Counter` object and `Dataset.zip` it together with the training set.
counter = tf.data.experimental.Counter()
train_ds = tf.data.Dataset.zip((train_datasets, (counter, counter)))
Map the augment
function to the training dataset:
train_ds = (
train_ds
.shuffle(1000)
.map(augment, num_parallel_calls=AUTOTUNE)
.batch(batch_size)
.prefetch(AUTOTUNE)
)
val_ds = (
val_ds
.map(resize_and_rescale, num_parallel_calls=AUTOTUNE)
.batch(batch_size)
.prefetch(AUTOTUNE)
)
test_ds = (
test_ds
.map(resize_and_rescale, num_parallel_calls=AUTOTUNE)
.batch(batch_size)
.prefetch(AUTOTUNE)
)
tf.random.Generator
object with an initial seed
value. Calling the make_seeds
function on the same generator object always returns a new, unique seed
value.make_seeds
function; and 2) passes the newly generated seed
value into the augment
function for random transformations.Note: tf.random.Generator
objects store RNG state in a tf.Variable
, which means it can be saved as a checkpoint or in a SavedModel. For more details, please refer to Random number generation.
# Create a generator.
rng = tf.random.Generator.from_seed(123, alg='philox')
# Create a wrapper function for updating seeds.
def f(x, y):
seed = rng.make_seeds(1)[:, 0]
image, label = augment((x, y), seed)
return image, label
Map the wrapper function f
to the training dataset, and the resize_and_rescale
function—to the validation and test sets:
train_ds = (
train_datasets
.shuffle(1000)
.map(f, num_parallel_calls=AUTOTUNE)
.batch(batch_size)
.prefetch(AUTOTUNE)
)
val_ds = (
val_ds
.map(resize_and_rescale, num_parallel_calls=AUTOTUNE)
.batch(batch_size)
.prefetch(AUTOTUNE)
)
test_ds = (
test_ds
.map(resize_and_rescale, num_parallel_calls=AUTOTUNE)
.batch(batch_size)
.prefetch(AUTOTUNE)
)
These datasets can now be used to train a model as shown previously.
This tutorial demonstrated data augmentation using Keras preprocessing layers and tf.image
.
tf.data
in this guide, and you can learn how to configure your input pipelines for performance here.