BatchNormalizationLayer - Batch normalization layer - MATLAB (original) (raw)

Batch normalization layer

Description

A batch normalization layer normalizes a mini-batch of data across all observations for each channel independently. To speed up training of the convolutional neural network and reduce the sensitivity to network initialization, use batch normalization layers between convolutional layers and nonlinearities, such as ReLU layers.

After normalization, the layer scales the input with a learnable scale factor_γ_ and shifts it by a learnable offset_β_.

Creation

Syntax

Description

`layer` = batchNormalizationLayer creates a batch normalization layer.

Properties

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Batch Normalization

Mean statistic used for prediction, specified as a numeric vector of per-channel mean values.

Depending on the type of layer input, the trainnet anddlnetwork functions automatically reshape this property to have of the following sizes:

Layer Input Property Size
feature input NumChannels-by-1
vector sequence input
1-D image input 1-by-NumChannels
1-D image sequence input
2-D image input 1-by-1-by-NumChannels
2-D image sequence input
3-D image input 1-by-1-by-1-by-NumChannels
3-D image sequence input

If the BatchNormalizationStatistics training option is 'moving', then the software approximates the batch normalization statistics during training using a running estimate and, after training, sets the TrainedMean andTrainedVariance properties to the latest values of the moving estimates of the mean and variance, respectively.

If the BatchNormalizationStatistics training option is'population', then after network training finishes, the software passes through the data once more and sets the TrainedMean andTrainedVariance properties to the mean and variance computed from the entire training data set, respectively.

The layer uses TrainedMean and TrainedVariance to normalize the input during prediction.

Data Types: single | double

Variance statistic used for prediction, specified as a numeric vector of per-channel variance values.

Depending on the type of layer input, the trainnet anddlnetwork functions automatically reshape this property to have of the following sizes:

Layer Input Property Size
feature input NumChannels-by-1
vector sequence input
1-D image input 1-by-NumChannels
1-D image sequence input
2-D image input 1-by-1-by-NumChannels
2-D image sequence input
3-D image input 1-by-1-by-1-by-NumChannels
3-D image sequence input

If the BatchNormalizationStatistics training option is 'moving', then the software approximates the batch normalization statistics during training using a running estimate and, after training, sets the TrainedMean andTrainedVariance properties to the latest values of the moving estimates of the mean and variance, respectively.

If the BatchNormalizationStatistics training option is'population', then after network training finishes, the software passes through the data once more and sets the TrainedMean andTrainedVariance properties to the mean and variance computed from the entire training data set, respectively.

The layer uses TrainedMean and TrainedVariance to normalize the input during prediction.

Data Types: single | double

Constant to add to the mini-batch variances, specified as a positive scalar.

The software adds this constant to the mini-batch variances before normalization to ensure numerical stability and avoid division by zero.

Before R2023a: Epsilon must be greater than or equal to 1e-5.

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64

This property is read-only.

Number of input channels, specified as one of the following:

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64 | char | string

Parameters and Initialization

Function to initialize the channel scale factors, specified as one of the following:

The layer only initializes the channel scale factors when the Scale property is empty.

Data Types: char | string | function_handle

Function to initialize the channel offsets, specified as one of the following:

The layer only initializes the channel offsets when the Offset property is empty.

Data Types: char | string | function_handle

Channel scale factors γ, specified as a numeric array.

The channel scale factors are learnable parameters. When you train a network using thetrainnet function or initialize a dlnetwork object, if Scale is nonempty, then the software uses the Scale property as the initial value. If Scale is empty, then the software uses the initializer specified byScaleInitializer.

Depending on the type of layer input, the trainnet anddlnetwork functions automatically reshape this property to have of the following sizes:

Layer Input Property Size
feature input NumChannels-by-1
vector sequence input
1-D image input 1-by-NumChannels
1-D image sequence input
2-D image input 1-by-1-by-NumChannels
2-D image sequence input
3-D image input 1-by-1-by-1-by-NumChannels
3-D image sequence input

Data Types: single | double

Channel offsets β, specified as a numeric vector.

The channel offsets are learnable parameters. When you train a network using the trainnet function or initialize a dlnetwork object, if Offset is nonempty, then the software uses the Offset property as the initial value. If Offset is empty, then the software uses the initializer specified byOffsetInitializer.

Depending on the type of layer input, the trainnet anddlnetwork functions automatically reshape this property to have of the following sizes:

Layer Input Property Size
feature input NumChannels-by-1
vector sequence input
1-D image input 1-by-NumChannels
1-D image sequence input
2-D image input 1-by-1-by-NumChannels
2-D image sequence input
3-D image input 1-by-1-by-1-by-NumChannels
3-D image sequence input

Data Types: single | double

Decay value for the moving mean computation, specified as a numeric scalar between 0 and 1.

When you use the trainNetwork ortrainnet function and the BatchNormalizationStatistics training option is'moving', at each iteration, the layer updates the moving mean value using

where μ* denotes the updated mean, λμ denotes the mean decay value, μ^ denotes the mean of the layer input, and μ denotes the latest value of the moving mean value.

When you use the trainNetwork ortrainnet function and the BatchNormalizationStatistics training option is'population', this option has no effect.

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64

Decay value for the moving variance computation, specified as a numeric scalar between 0 and1.

When you use the trainNetwork ortrainnet function and the BatchNormalizationStatistics training option is'moving', at each iteration, the layer updates the moving variance value using

where σ2* denotes the updated variance, λσ2 denotes the variance decay value, σ2^ denotes the variance of the layer input, and σ2 denotes the latest value of the moving variance value.

When you use the trainNetwork ortrainnet function and the BatchNormalizationStatistics training option is'population', this option has no effect.

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64

Learning Rate and Regularization

Learning rate factor for the scale factors, specified as a nonnegative scalar.

The software multiplies this factor by the global learning rate to determine the learning rate for the scale factors in a layer. For example, if ScaleLearnRateFactor is 2, then the learning rate for the scale factors in the layer is twice the current global learning rate. The software determines the global learning rate based on the settings specified with the trainingOptions function.

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64

Learning rate factor for the offsets, specified as a nonnegative scalar.

The software multiplies this factor by the global learning rate to determine the learning rate for the offsets in a layer. For example, if OffsetLearnRateFactor is 2, then the learning rate for the offsets in the layer is twice the current global learning rate. The software determines the global learning rate based on the settings specified with the trainingOptions function.

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64

L2 regularization factor for the scale factors, specified as a nonnegative scalar.

The software multiplies this factor by the global L2 regularization factor to determine the learning rate for the scale factors in a layer. For example, ifScaleL2Factor is 2, then the L2 regularization for the offsets in the layer is twice the global L2 regularization factor. You can specify the global L2 regularization factor using the trainingOptions function.

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64

L2 regularization factor for the offsets, specified as a nonnegative scalar.

The software multiplies this factor by the global L2 regularization factor to determine the learning rate for the offsets in a layer. For example, ifOffsetL2Factor is 2, then the L2 regularization for the offsets in the layer is twice the global L2 regularization factor. You can specify the global L2 regularization factor using the trainingOptions function.

Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64

Layer

Data Types: char | string

This property is read-only.

Number of inputs to the layer, stored as 1. This layer accepts a single input only.

Data Types: double

This property is read-only.

Input names, stored as {'in'}. This layer accepts a single input only.

Data Types: cell

This property is read-only.

Number of outputs from the layer, stored as 1. This layer has a single output only.

Data Types: double

This property is read-only.

Output names, stored as {'out'}. This layer has a single output only.

Data Types: cell

Examples

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Create a batch normalization layer with the name BN1.

layer = batchNormalizationLayer(Name="BN1")

layer = BatchNormalizationLayer with properties:

           Name: 'BN1'
    NumChannels: 'auto'

Hyperparameters MeanDecay: 0.1000 VarianceDecay: 0.1000 Epsilon: 1.0000e-05

Learnable Parameters Offset: [] Scale: []

State Parameters TrainedMean: [] TrainedVariance: []

Show all properties

Include batch normalization layers in a Layer array.

layers = [ imageInputLayer([32 32 3])

convolution2dLayer(3,16,Padding=1)
batchNormalizationLayer
reluLayer   

maxPooling2dLayer(2,Stride=2)

convolution2dLayer(3,32,Padding=1)
batchNormalizationLayer
reluLayer
      
fullyConnectedLayer(10)
softmaxLayer
]

layers = 10×1 Layer array with layers:

 1   ''   Image Input           32×32×3 images with 'zerocenter' normalization
 2   ''   2-D Convolution       16 3×3 convolutions with stride [1  1] and padding [1  1  1  1]
 3   ''   Batch Normalization   Batch normalization
 4   ''   ReLU                  ReLU
 5   ''   2-D Max Pooling       2×2 max pooling with stride [2  2] and padding [0  0  0  0]
 6   ''   2-D Convolution       32 3×3 convolutions with stride [1  1] and padding [1  1  1  1]
 7   ''   Batch Normalization   Batch normalization
 8   ''   ReLU                  ReLU
 9   ''   Fully Connected       10 fully connected layer
10   ''   Softmax               softmax

Tips

Algorithms

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A batch normalization layer normalizes a mini-batch of data across all observations for each channel independently. To speed up training of the convolutional neural network and reduce the sensitivity to network initialization, use batch normalization layers between convolutional layers and nonlinearities, such as ReLU layers.

The layer first normalizes the activations of each channel by subtracting the mini-batch mean and dividing by the mini-batch standard deviation. Then, the layer shifts the input by a learnable offset β and scales it by a learnable scale factor_γ_. β and γ are themselves learnable parameters that are updated during network training.

Batch normalization layers normalize the activations and gradients propagating through a neural network, making network training an easier optimization problem. To take full advantage of this fact, you can try increasing the learning rate. Since the optimization problem is easier, the parameter updates can be larger and the network can learn faster. You can also try reducing the L2 and dropout regularization. With batch normalization layers, the activations of a specific image during training depend on which images happen to appear in the same mini-batch. To take full advantage of this regularizing effect, try shuffling the training data before every training epoch. To specify how often to shuffle the data during training, use the 'Shuffle' name-value pair argument of trainingOptions.

The batch normalization operation normalizes the elements_xi_ of the input by first calculating the mean_μB_ and variance_σB2_ over the spatial, time, and observation dimensions for each channel independently. Then, it calculates the normalized activations as

where ϵ is a constant that improves numerical stability when the variance is very small.

To allow for the possibility that inputs with zero mean and unit variance are not optimal for the operations that follow batch normalization, the batch normalization operation further shifts and scales the activations using the transformation

where the offset β and scale factor_γ_ are learnable parameters that are updated during network training.

To make predictions with the network after training, batch normalization requires a fixed mean and variance to normalize the data. This fixed mean and variance can be calculated from the training data after training, or approximated during training using running statistic computations.

If the BatchNormalizationStatistics training option is 'moving', then the software approximates the batch normalization statistics during training using a running estimate and, after training, sets the TrainedMean andTrainedVariance properties to the latest values of the moving estimates of the mean and variance, respectively.

If the BatchNormalizationStatistics training option is'population', then after network training finishes, the software passes through the data once more and sets the TrainedMean andTrainedVariance properties to the mean and variance computed from the entire training data set, respectively.

The layer uses TrainedMean and TrainedVariance to normalize the input during prediction.

Layers in a layer array or layer graph pass data to subsequent layers as formatted dlarray objects. The format of a dlarray object is a string of characters in which each character describes the corresponding dimension of the data. The format consists of one or more of these characters:

For example, you can describe 2-D image data that is represented as a 4-D array, where the first two dimensions correspond to the spatial dimensions of the images, the third dimension corresponds to the channels of the images, and the fourth dimension corresponds to the batch dimension, as having the format "SSCB" (spatial, spatial, channel, batch).

You can interact with these dlarray objects in automatic differentiation workflows, such as those for developing a custom layer, using a functionLayer object, or using the forward and predict functions withdlnetwork objects.

This table shows the supported input formats of BatchNormalizationLayer objects and the corresponding output format. If the software passes the output of the layer to a custom layer that does not inherit from the nnet.layer.Formattable class, or aFunctionLayer object with the Formattable property set to 0 (false), then the layer receives an unformatted dlarray object with dimensions ordered according to the formats in this table. The formats listed here are only a subset. The layer may support additional formats such as formats with additional "S" (spatial) or"U" (unspecified) dimensions.

Input Format Output Format
"CB" (channel, batch) "CB" (channel, batch)
"SCB" (spatial, channel, batch) "SCB" (spatial, channel, batch)
"SSCB" (spatial, spatial, channel, batch) "SSCB" (spatial, spatial, channel, batch)
"SSSCB" (spatial, spatial, spatial, channel, batch) "SSSCB" (spatial, spatial, spatial, channel, batch)
"CBT" (channel, batch, time) "CBT" (channel, batch, time)
"SCBT" (spatial, channel, batch, time) "SCBT" (spatial, channel, batch, time)
"SSCBT" (spatial, spatial, channel, batch, time) "SSCBT" (spatial, spatial, channel, batch, time)
"SSSCBT" (spatial, spatial, spatial, channel, batch, time) "SSSCBT" (spatial, spatial, spatial, channel, batch, time)
"CU" (channel, unspecified) "CU" (channel, unspecified)
"SC" (spatial, channel) "SC" (spatial, channel)
"SSC" (spatial, spatial, channel) "SSC" (spatial, spatial, channel)
"SSSC" (spatial, spatial, spatial, channel) "SSSC" (spatial, spatial, spatial, channel)

In dlnetwork objects, BatchNormalizationLayer objects also support these input and output format combinations.

Input Format Output Format
"CT" (channel, time) "CT" (channel, time)
"SCT" (spatial, channel, time) "SCT" (spatial, channel, time)
"SSCT" (spatial, spatial, channel, time) "SSCT" (spatial, spatial, channel, time)
"SSSCT" (spatial, spatial, spatial, channel, time) "SSSCT" (spatial, spatial, spatial, channel, time)

References

[1] Ioffe, Sergey, and Christian Szegedy. “Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift.” Preprint, submitted March 2, 2015. https://arxiv.org/abs/1502.03167.

Extended Capabilities

Version History

Introduced in R2017b

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The Epsilon option also supports positive values less than 1e-5.