View source on GitHub |
Randomly zoom each image during training.
Inherits From: PreprocessingLayer
, Layer
, Module
tf.keras.layers.experimental.preprocessing.RandomZoom(
height_factor, width_factor=None, fill_mode='reflect',
interpolation='bilinear', seed=None, name=None, fill_value=0.0,
**kwargs
)
Arguments | |
---|---|
height_factor
|
a float represented as fraction of value, or a tuple
of size 2 representing lower and upper bound for zooming vertically.
When represented as a single float, this value is used for both the
upper and lower bound. A positive value means zooming out, while a
negative value means zooming in.
For instance, height_factor=(0.2, 0.3) result in an output zoomed out
by a random amount in the range [+20%, +30%].
height_factor=(-0.3, -0.2) result in an output zoomed in by a random
amount in the range [+20%, +30%].
|
width_factor
|
a float represented as fraction of value, or a tuple
of size 2 representing lower and upper bound for zooming horizontally.
When represented as a single float, this value is used for both the
upper and lower bound.
For instance, width_factor=(0.2, 0.3) result in an output zooming out
between 20% to 30%.
width_factor=(-0.3, -0.2) result in an output zooming in between 20%
to 30%. Defaults to None , i.e., zooming vertical and horizontal
directions by preserving the aspect ratio.
|
fill_mode
|
Points outside the boundaries of the input are filled according
to the given mode (one of {'constant', 'reflect', 'wrap', 'nearest'} ).
|
interpolation
|
Interpolation mode. Supported values: "nearest", "bilinear". |
seed
|
Integer. Used to create a random seed. |
name
|
A string, the name of the layer. |
fill_value
|
a float represents the value to be filled outside the
boundaries when fill_mode is "constant".
|
Example:
input_img = np.random.random((32, 224, 224, 3))
layer = tf.keras.layers.experimental.preprocessing.RandomZoom(.5, .2)
out_img = layer(input_img)
out_img.shape
TensorShape([32, 224, 224, 3])
Input shape:
4D tensor with shape:
(samples, height, width, channels)
, data_format='channels_last'.
Output shape:
4D tensor with shape:
(samples, height, width, channels)
, data_format='channels_last'.
Raise | |
---|---|
ValueError
|
if lower bound is not between [0, 1], or upper bound is negative. |
Methods
adapt
adapt(
data, reset_state=True
)
Fits the state of the preprocessing layer to the data being passed.
Arguments | |
---|---|
data
|
The data to train on. It can be passed either as a tf.data Dataset, or as a numpy array. |
reset_state
|
Optional argument specifying whether to clear the state of
the layer at the start of the call to adapt , or whether to start
from the existing state. This argument may not be relevant to all
preprocessing layers: a subclass of PreprocessingLayer may choose to
throw if 'reset_state' is set to False.
|