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Layer that normalizes its inputs.
Inherits From: Layer, Operation
tf.keras.layers.BatchNormalization(
axis=-1,
momentum=0.99,
epsilon=0.001,
center=True,
scale=True,
beta_initializer='zeros',
gamma_initializer='ones',
moving_mean_initializer='zeros',
moving_variance_initializer='ones',
beta_regularizer=None,
gamma_regularizer=None,
beta_constraint=None,
gamma_constraint=None,
synchronized=False,
**kwargs
)
Used in the notebooks
| Used in the guide | Used in the tutorials |
|---|---|
Batch normalization applies a transformation that maintains the mean output close to 0 and the output standard deviation close to 1.
Importantly, batch normalization works differently during training and during inference.
During training (i.e. when using fit() or when calling the layer/model
with the argument training=True), the layer normalizes its output using
the mean and standard deviation of the current batch of inputs. That is to
say, for each channel being normalized, the layer returns
gamma * (batch - mean(batch)) / sqrt(var(batch) + epsilon) + beta, where:
epsilonis small constant (configurable as part of the constructor arguments)gammais a learned scaling factor (initialized as 1), which can be disabled by passingscale=Falseto the constructor.betais a learned offset factor (initialized as 0), which can be disabled by passingcenter=Falseto the constructor.
During inference (i.e. when using evaluate() or predict() or when
calling the layer/model with the argument training=False (which is the
default), the layer normalizes its output using a moving average of the
mean and standard deviation of the batches it has seen during training. That
is to say, it returns
gamma * (batch - self.moving_mean) / sqrt(self.moving_var+epsilon) + beta.
self.moving_mean and self.moving_var are non-trainable variables that
are updated each time the layer in called in training mode, as such:
moving_mean = moving_mean * momentum + mean(batch) * (1 - momentum)moving_var = moving_var * momentum + var(batch) * (1 - momentum)
As such, the layer will only normalize its inputs during inference after having been trained on data that has similar statistics as the inference data.
Reference:
About setting layer.trainable = False on a BatchNormalization layer:
The meaning of setting layer.trainable = False is to freeze the layer,
i.e. its internal state will not change during training:
its trainable weights will not be updated
during fit() or train_on_batch(), and its state updates will not be run.
Usually, this does not necessarily mean that the layer is run in inference
mode (which is normally controlled by the training argument that can
be passed when calling a layer). "Frozen state" and "inference mode"
are two separate concepts.
However, in the case of the BatchNormalization layer, setting
trainable = False on the layer means that the layer will be
subsequently run in inference mode (meaning that it will use
the moving mean and the moving variance to normalize the current batch,
rather than using the mean and variance of the current batch).
Note that:
- Setting
trainableon an model containing other layers will recursively set thetrainablevalue of all inner layers. - If the value of the
trainableattribute is changed after callingcompile()on a model, the new value doesn't take effect for this model untilcompile()is called again.
Methods
from_config
@classmethodfrom_config( config )
Creates a layer from its config.
This method is the reverse of get_config,
capable of instantiating the same layer from the config
dictionary. It does not handle layer connectivity
(handled by Network), nor weights (handled by set_weights).
| Args | |
|---|---|
config
|
A Python dictionary, typically the output of get_config. |
| Returns | |
|---|---|
| A layer instance. |
symbolic_call
symbolic_call(
*args, **kwargs
)
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