imageInputLayer
Image input layer
Description
An image input layer inputs 2-D images to a neural network and applies data normalization.
For 3-D image input, use image3dInputLayer.
Creation
Description
sets optional properties using one or more name-value arguments.layer = imageInputLayer(inputSize,Name=Value)
Input Arguments
Size of the input data, specified as a row vector of integers
[h w c], where h,
w, and c correspond to the
height, width, and number of channels respectively.
For grayscale images, specify a vector with
cequal to1.For RGB images, specify a vector with
cequal to3.For multispectral or hyperspectral images, specify a vector with
cequal to the number of channels.
For 3-D image or volume input, use image3dInputLayer.
Name-Value Arguments
Specify optional pairs of arguments as
Name1=Value1,...,NameN=ValueN, where Name is
the argument name and Value is the corresponding value.
Name-value arguments must appear after other arguments, but the order of the
pairs does not matter.
Before R2021a, use commas to separate each name and value,
and enclose
Name
in quotes.
Example: imageInputLayer([28 28 3],Name="input") creates an
image input layer with input size [28 28 3] and name
'input'.
Data normalization to apply every time data is forward propagated through the input layer, specified as one of the following:
"zerocenter"— Subtract the mean specified byMean."zscore"— Subtract the mean specified byMeanand divide byStandardDeviation."rescale-symmetric"— Rescale the input to be in the range [-1, 1] using the minimum and maximum values specified byMinandMax, respectively."rescale-zero-one"— Rescale the input to be in the range [0, 1] using the minimum and maximum values specified byMinandMax, respectively."none"— Do not normalize the input data.function handle — Normalize the data using the specified function. The function must be of the form
Y = f(X), whereXis the input data and the outputYis the normalized data.
If the input data is
complex-valued and the SplitComplexInputs
option is 0 (false),
then the Normalization option must be
"zerocenter",
"zscore", "none",
or a function handle. (since R2024a)
Before R2024a: To input
complex-valued data into the network, the
SplitComplexInputs option must be
1 (true).
Tip
The software, by default, automatically calculates the
normalization statistics when you use the trainnet function. To save time when
training, specify the required statistics for normalization
and set the ResetInputNormalization option in trainingOptions
to 0 (false).
The ImageInputLayer object stores the
Normalization property as a character
vector or a function handle.
Normalization dimension, specified as one of the following:
"auto"– If theResetInputNormalizationtraining option is0(false) and you specify any of the normalization statistics (Mean,StandardDeviation,Min, orMax), then normalize over the dimensions matching the statistics. Otherwise, recalculate the statistics at training time and apply channel-wise normalization."channel"– Channel-wise normalization."element"– Element-wise normalization."all"– Normalize all values using scalar statistics.
The ImageInputLayer object stores the
NormalizationDimension property as a
character vector.
Mean for zero-center and z-score normalization, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of means per channel,
a numeric scalar, or [], where
h, w, and
c correspond to the height, width, and the
number of channels of the mean, respectively.
To specify the Mean property,
the Normalization property must
be "zerocenter" or "zscore".
If Mean is [],
then the software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the mean using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to0.
Mean can be
complex-valued. (since R2024a) If Mean is
complex-valued, then the SplitComplexInputs
option must be 0
(false).
Before R2024a: Split the mean into real
and imaginary parts and set split the input data into real and
imaginary parts by setting the SplitComplexInputs
option to 1 (true).
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
Complex Number Support: Yes
Standard deviation for z-score normalization, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of means per channel,
a numeric scalar, or [], where
h, w, and
c correspond to the height, width, and the
number of channels of the standard deviation, respectively.
To specify the StandardDeviation property, the Normalization property must be
"zscore". If StandardDeviation is [], then the
software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the standard deviation using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to1.
StandardDeviation
can be complex-valued. (since R2024a) If
StandardDeviation is complex-valued, then the
SplitComplexInputs option must be
0 (false).
Before R2024a: Split the standard
deviation into real and imaginary parts and set split the input data
into real and imaginary parts by setting the
SplitComplexInputs option to
1 (true).
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
Complex Number Support: Yes
Minimum value for rescaling, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of minima per channel,
a numeric scalar, or [], where
h, w, and
c correspond to the height, width, and the
number of channels of the minima, respectively.
To specify the Min property,
the Normalization must be
"rescale-symmetric" or
"rescale-zero-one". If Min is [], then the
software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the minimum value using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to-1and0whenNormalizationis"rescale-symmetric"and"rescale-zero-one", respectively.
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
Maximum value for rescaling, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of maxima per channel,
a numeric scalar, or [], where
h, w, and
c correspond to the height, width, and the
number of channels of the maxima, respectively.
To specify the Max property,
the Normalization must be
"rescale-symmetric" or
"rescale-zero-one". If Max is [], then the
software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the maximum value using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to1.
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
Flag to split input data into real and imaginary components specified as one of these values:
0(false) – Do not split input data.1(true) – Split data into real and imaginary components.
When SplitComplexInputs is
1, then the layer outputs twice as many
channels as the input data. For example, if the input data is
complex-valued with numChannels channels, then
the layer outputs data with 2*numChannels
channels, where channels 1 through
numChannels contain the real components of
the input data and numChannels+1 through
2*numChannels contain the imaginary
components of the input data. If the input data is real, then
channels numChannels+1 through
2*numChannels are all zero.
If the input data is
complex-valued and SplitComplexInputs is
0 (false), then the layer
passes the complex-valued data to the next layers. (since R2024a)
Before R2024a: To input complex-valued
data into a neural network, the
SplitComplexInputs option of the input
layer must be 1 (true).
For an example showing how to train a network with complex-valued data, see Train Network with Complex-Valued Data.
Properties
Image Input
This property is read-only.
Size of the input data, specified as a row vector of integers
[h w c], where h,
w, and c correspond to the
height, width, and number of channels respectively.
For grayscale images, specify a vector with
cequal to1.For RGB images, specify a vector with
cequal to3.For multispectral or hyperspectral images, specify a vector with
cequal to the number of channels.
For 3-D image or volume input, use image3dInputLayer.
This property is read-only.
Data normalization to apply every time data is forward propagated through the input layer, specified as one of the following:
"zerocenter"— Subtract the mean specified byMean."zscore"— Subtract the mean specified byMeanand divide byStandardDeviation."rescale-symmetric"— Rescale the input to be in the range [-1, 1] using the minimum and maximum values specified byMinandMax, respectively."rescale-zero-one"— Rescale the input to be in the range [0, 1] using the minimum and maximum values specified byMinandMax, respectively."none"— Do not normalize the input data.function handle — Normalize the data using the specified function. The function must be of the form
Y = f(X), whereXis the input data and the outputYis the normalized data.
If the input data is complex-valued and the
SplitComplexInputs option is 0
(false), then the Normalization option must be
"zerocenter", "zscore",
"none", or a function handle. (since R2024a)
Before R2024a: To input complex-valued data into the network,
the SplitComplexInputs option must be 1
(true).
Tip
The software, by default, automatically calculates the normalization statistics when you use
the trainnet
function. To save time when training, specify the required statistics for normalization
and set the ResetInputNormalization option in trainingOptions to 0
(false).
The ImageInputLayer object stores this property as a character vector or a
function handle.
Normalization dimension, specified as one of the following:
"auto"– If theResetInputNormalizationtraining option is0(false) and you specify any of the normalization statistics (Mean,StandardDeviation,Min, orMax), then normalize over the dimensions matching the statistics. Otherwise, recalculate the statistics at training time and apply channel-wise normalization."channel"– Channel-wise normalization."element"– Element-wise normalization."all"– Normalize all values using scalar statistics.
The ImageInputLayer object stores this property as a character vector.
Mean for zero-center and z-score normalization, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of means per channel, a
numeric scalar, or [], where h,
w, and c correspond to the
height, width, and the number of channels of the mean,
respectively.
To specify the Mean property, the Normalization property must be "zerocenter"
or "zscore". If Mean is
[], then the software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the mean using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to0.
Mean can be complex-valued. (since R2024a) If
Mean is complex-valued, then the
SplitComplexInputs option must be 0
(false).
Before R2024a: Split the mean into real and imaginary parts and split
the input data into real and imaginary parts by setting the
SplitComplexInputs option to
1 (true).
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
Complex Number Support: Yes
Standard deviation for z-score normalization, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of means per channel, a
numeric scalar, or [], where h,
w, and c correspond to the
height, width, and the number of channels of the standard deviation,
respectively.
To specify the StandardDeviation property, the
Normalization property must be
"zscore". If StandardDeviation is
[], then the software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the standard deviation using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to1.
StandardDeviation can be
complex-valued. (since R2024a) If StandardDeviation is complex-valued, then
the SplitComplexInputs option must be 0
(false).
Before R2024a: Split the standard deviation into real and imaginary
parts and split the input data into real and imaginary parts by setting the
SplitComplexInputs option to 1
(true).
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
Complex Number Support: Yes
Minimum value for rescaling, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of minima per channel, a
numeric scalar, or [], where h,
w, and c correspond to the
height, width, and the number of channels of the minima,
respectively.
To specify the Min property, the Normalization must be "rescale-symmetric" or
"rescale-zero-one". If Min is
[], then the software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the minimum value using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to-1and0whenNormalizationis"rescale-symmetric"and"rescale-zero-one", respectively.
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
Maximum value for rescaling, specified as a
h-by-w-by-c
array, a 1-by-1-by-c array of maxima per channel, a
numeric scalar, or [], where h,
w, and c correspond to the
height, width, and the number of channels of the maxima,
respectively.
To specify the Max property, the Normalization must be "rescale-symmetric" or
"rescale-zero-one". If Max is
[], then the software automatically sets the property at training or
initialization time:
The
trainnetfunction calculates the maximum value using the training data and uses the resulting value.The
initializefunction and thedlnetworkfunction when theInitializeoption is1(true) sets the property to1.
Data Types: single | double | int8 | int16 | int32 | int64 | uint8 | uint16 | uint32 | uint64
This property is read-only.
Flag to split input data into real and imaginary components specified as one of these values:
0(false) – Do not split input data.1(true) – Split data into real and imaginary components.
When SplitComplexInputs is 1, then the layer
outputs twice as many channels as the input data. For example, if the input data is
complex-valued with numChannels channels, then the layer outputs data
with 2*numChannels channels, where channels 1
through numChannels contain the real components of the input data and
numChannels+1 through 2*numChannels contain
the imaginary components of the input data. If the input data is real, then channels
numChannels+1 through 2*numChannels are all
zero.
If the input data is complex-valued and
SplitComplexInputs is 0
(false), then the layer passes the complex-valued data to the
next layers. (since R2024a)
Before R2024a: To input complex-valued data into a neural
network, the SplitComplexInputs option of the input layer must be
1 (true).
For an example showing how to train a network with complex-valued data, see Train Network with Complex-Valued Data.
Layer
This property is read-only.
Number of inputs of the layer. The layer has no inputs.
Data Types: double
This property is read-only.
Input names of the layer. The layer has no inputs.
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
Create an image input layer for 28-by-28 color images.
inputlayer = imageInputLayer([28 28 3])
inputlayer =
ImageInputLayer with properties:
Name: ''
InputSize: [28 28 3]
SplitComplexInputs: 0
Hyperparameters
DataAugmentation: 'none'
Normalization: 'zerocenter'
NormalizationDimension: 'auto'
Mean: []
Include an image input layer in a Layer array.
layers = [
imageInputLayer([28 28 1])
convolution2dLayer(5,20)
reluLayer
maxPooling2dLayer(2,Stride=2)
fullyConnectedLayer(10)
softmaxLayer]layers =
6×1 Layer array with layers:
1 '' Image Input 28×28×1 images with 'zerocenter' normalization
2 '' 2-D Convolution 20 5×5 convolutions with stride [1 1] and padding [0 0 0 0]
3 '' ReLU ReLU
4 '' 2-D Max Pooling 2×2 max pooling with stride [2 2] and padding [0 0 0 0]
5 '' Fully Connected 10 fully connected layer
6 '' Softmax softmax
Algorithms
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:
"S"— Spatial"C"— Channel"B"— Batch"T"— Time"U"— Unspecified
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).
The input layer of a network specifies the layout of the data that the network expects. If you have data in a different layout, then specify the layout using the InputDataFormats training option.
The layer inputs
h-by-w-by-c-by-N
arrays into the network, where h, w, and
c are the height, width, and number of channels of the
images, respectively, and N is the number of images. Data in this
layout has the data format "SSCB" (spatial, spatial, channel,
batch).
For complex-valued input to the neural network, when the SplitComplexIputs is 0 (false), the layer passes complex-valued data to subsequent layers. (since R2024a)
Before R2024a: To input complex-valued data into a neural network, the SplitComplexInputs option of the input layer must be 1 (true).
If the input data is complex-valued and the SplitComplexInputs option is 0 (false), then the Normalization option must be "zerocenter", "zscore", "none", or a function handle. The Mean and StandardDeviation properties of the layer also support complex-valued data for the "zerocenter" and "zscore" normalization options.
For an example showing how to train a network with complex-valued data, see Train Network with Complex-Valued Data.
References
[1] Krizhevsky, Alex, Ilya Sutskever, and Geoffrey E. Hinton. "ImageNet Classification with Deep Convolutional Neural Networks." Communications of the ACM 60, no. 6 (May 24, 2017): 84–90. https://doi.org/10.1145/3065386.
[2] Cireşan, D., U. Meier, J. Schmidhuber. "Multi-column Deep Neural Networks for Image Classification". IEEE Conference on Computer Vision and Pattern Recognition, 2012.
Extended Capabilities
Usage notes and limitations:
Code generation does not support passing
dlarrayobjects with unspecified (U) dimensions to this layer.Code generation does not support
Normalizationspecified using a function handle.Code generation does not support complex input and does not support the
SplitComplexInputsoption.
Refer to the usage notes and limitations in the C/C++ Code Generation section. The same limitations apply to GPU code generation.
Version History
Introduced in R2016aFor complex-valued input to the neural network, when the SplitComplexIputs is 0 (false), the layer passes complex-valued data to subsequent layers.
If the input data is complex-valued and the SplitComplexInputs option is
0 (false), then the
Normalization option must be "zerocenter",
"zscore", "none", or a function handle. The
Mean and StandardDeviation properties of the layer
also support complex-valued data for the "zerocenter" and
"zscore" normalization options.
AverageImage will be removed. Use Mean instead. To update your code, replace all instances of AverageImage with Mean.
There are no differences between the properties that require additional updates to your
code.
Starting in R2019b, imageInputLayer and image3dInputLayer,
by default, use channel-wise normalization. In previous versions, these layers use
element-wise normalization. To reproduce this behavior, set the NormalizationDimension option of these layers to
'element'.
The DataAugmentation property is not recommended. To preprocess
images with cropping, reflection, and other geometric transformations, use augmentedImageDatastore instead.
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