tf.keras.backend.batch_normalization
Applies batch normalization on x given mean, var, beta and gamma.
tf.keras.backend.batch_normalization(
x, mean, var, beta, gamma, axis=-1, epsilon=0.001
)
I.e. returns:
output = (x - mean) / (sqrt(var) + epsilon) * gamma + beta
Arguments |
x
|
Input tensor or variable.
|
mean
|
Mean of batch.
|
var
|
Variance of batch.
|
beta
|
Tensor with which to center the input.
|
gamma
|
Tensor by which to scale the input.
|
axis
|
Integer, the axis that should be normalized.
(typically the features axis).
|
epsilon
|
Fuzz factor.
|
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Last updated 2020-10-01 UTC.
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