原文:https://tensorflow.google.cn/tutorials/images/data_augmentation
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. First, you will use Keras Preprocessing Layers. Next, you will use tf.image
.
pip install -q tf-nightly
WARNING: You are using pip version 20.2.2; however, version 20.2.3 is available.
You should consider upgrading via the '/tmpfs/src/tf_docs_env/bin/python -m pip install --upgrade pip' command.
import matplotlib.pyplot as plt
import numpy as np
import tensorflow as tf
import tensorflow_datasets as tfds
from tensorflow.keras import layers
from tensorflow.keras.datasets import mnist
This tutorial uses the tf_flowers dataset. For convenience, download the dataset using TensorFlow Datasets. If you would like to learn about others ways of importing data, see 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,
)
Downloading and preparing dataset tf_flowers/3.0.1 (download: 218.21 MiB, generated: 221.83 MiB, total: 440.05 MiB) to /home/kbuilder/tensorflow_datasets/tf_flowers/3.0.1...
Warning:absl:Dataset tf_flowers is hosted on GCS. It will automatically be downloaded to your
local data directory. If you'd instead prefer to read directly from our public
GCS bucket (recommended if you're running on GCP), you can instead pass
`try_gcs=True` to `tfds.load` or set `data_dir=gs://tfds-data/datasets`.
Dataset tf_flowers downloaded and prepared to /home/kbuilder/tensorflow_datasets/tf_flowers/3.0.1\. Subsequent calls will reuse this data.
The flowers dataset has five classes.
num_classes = metadata.features['label'].num_classes
print(num_classes)
5
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))
Note: The Keras Preprocesing Layers introduced in this section are currently experimental.
You can use preprocessing layers to resize your images to a consistent shape, and to rescale pixel values.
IMG_SIZE = 180
resize_and_rescale = tf.keras.Sequential([
layers.experimental.preprocessing.Resizing(IMG_SIZE, IMG_SIZE),
layers.experimental.preprocessing.Rescaling(1./255)
])
Note: the rescaling layer above standardizes pixel values to [0,1]
. If instead you wanted [-1,1]
, you would write Rescaling(1./127.5, offset=-1)
.
You can see the result of applying these layers to an image.
result = resize_and_rescale(image)
_ = plt.imshow(result)
You can verify the pixels are in [0-1]
.
print("Min and max pixel values:", result.numpy().min(), result.numpy().max())
Min and max pixel values: 0.0 1.0
You can use preprocessing layers for data augmentation as well.
Let's create a few preprocessing layers and apply them repeatedly to the same image.
data_augmentation = tf.keras.Sequential([
layers.experimental.preprocessing.RandomFlip("horizontal_and_vertical"),
layers.experimental.preprocessing.RandomRotation(0.2),
])
# Add the image to a batch
image = tf.expand_dims(image, 0)
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 layers.RandomContrast
, layers.RandomCrop
, layers.RandomZoom
, and others.
There are two ways you can use these preprocessing layers, with important tradeoffs.
model = tf.keras.Sequential([
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:
- Data augmentation will happen asynchronously on the CPU, and is non-blocking. You can overlap the training of your model on the GPU with data preprocessing, using
Dataset.prefetch
, shown below. - In this case the prepreprocessing layers will not be exported with the model when you call
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 train, validation, and test datasets with the preprocessing layers you created above. You will also configure the datasets for performance, using parallel reads and buffered prefetching to yield batches from disk without I/O become blocking. You can 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.experimental.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 prefecting 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 these datasets. 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)
])
model.compile(optimizer='adam',
loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
metrics=['accuracy'])
epochs=5
history = model.fit(
train_ds,
validation_data=val_ds,
epochs=epochs
)
Epoch 1/5
92/92 [==============================] - 30s 315ms/step - loss: 1.5078 - accuracy: 0.3428 - val_loss: 1.0809 - val_accuracy: 0.6240
Epoch 2/5
92/92 [==============================] - 28s 303ms/step - loss: 1.0781 - accuracy: 0.5724 - val_loss: 0.9762 - val_accuracy: 0.6322
Epoch 3/5
92/92 [==============================] - 28s 295ms/step - loss: 1.0083 - accuracy: 0.5900 - val_loss: 0.9570 - val_accuracy: 0.6376
Epoch 4/5
92/92 [==============================] - 28s 300ms/step - loss: 0.9537 - accuracy: 0.6116 - val_loss: 0.9081 - val_accuracy: 0.6485
Epoch 5/5
92/92 [==============================] - 28s 301ms/step - loss: 0.8816 - accuracy: 0.6525 - val_loss: 0.8353 - val_accuracy: 0.6594
loss, acc = model.evaluate(test_ds)
print("Accuracy", acc)
12/12 [==============================] - 1s 83ms/step - loss: 0.8226 - accuracy: 0.6567
Accuracy 0.6566757559776306
You can also create custom data augmenation layers. This tutorial shows two ways of doing so. First, you will create a layers.Lambda
layer. This is a good way to write concise code. Next, you will write a new layer via subclassing, which gives you more control. Both layers will randomly invert the colors in an image, accoring 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 layers.preprocessing
utilities are convenient. 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 the image either vertically or horizontally.
flipped = tf.image.flip_left_right(image)
visualize(image, flipped)
Grayscale an image.
grayscaled = tf.image.rgb_to_grayscale(image)
visualize(image, tf.squeeze(grayscaled))
_ = plt.colorbar()
Saturate an image by providing a saturation factor.
saturated = tf.image.adjust_saturation(image, 3)
visualize(image, saturated)
Change the brightness of image 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.
cropped = tf.image.central_crop(image, central_fraction=0.5)
visualize(image,cropped)
Rotate an image by 90 degrees.
rotated = tf.image.rot90(image)
visualize(image, rotated)
As before, apply data augmentation to a dataset using Dataset.map
.
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
def augment(image,label):
image, label = resize_and_rescale(image, label)
# Add 6 pixels of padding
image = tf.image.resize_with_crop_or_pad(image, IMG_SIZE + 6, IMG_SIZE + 6)
# Random crop back to the original size
image = tf.image.random_crop(image, size=[IMG_SIZE, IMG_SIZE, 3])
image = tf.image.random_brightness(image, max_delta=0.5) # Random brightness
image = tf.clip_by_value(image, 0, 1)
return image, label
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)
)
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
. To learn how to include preprocessing layers inside your model, see the Image classification tutorial. You may also be interested in learning how preprocessing layers can help you classify text, as shown in the Basic text classification tutorial. You can learn more about tf.data
in this guide, and you can learn how to configure your input pipelines for performance here.