View source on GitHub |
Randomly rotate each image.
Inherits From: PreprocessingLayer
, Layer
, Module
tf.keras.layers.experimental.preprocessing.RandomRotation(
factor, fill_mode='reflect', interpolation='bilinear',
seed=None, name=None, fill_value=0.0, **kwargs
)
By default, random rotations are only applied during training.
At inference time, the layer does nothing. If you need to apply random
rotations at inference time, set training
to True when calling the layer.
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'.
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 either bound is not between [0, 1], or upper bound is less than lower bound. |
Attributes | |
---|---|
factor
|
a float represented as fraction of 2pi, or a tuple of size
2 representing lower and upper bound for rotating clockwise and
counter-clockwise. A positive values means rotating counter clock-wise,
while a negative value means clock-wise. When represented as a single
float, this value is used for both the upper and lower bound. For
instance, factor=(-0.2, 0.3) results in an output
rotation by a random amount in the range [-20% * 2pi, 30% * 2pi] .
factor=0.2 results in an output rotating by a random amount in the range
[-20% * 2pi, 20% * 2pi] .
|
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".
|
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.
|