averagePooling1dLayer
Description
A 1-D average pooling layer performs downsampling by dividing the input into 1-D pooling regions, then computing the average of each region.
The dimension that the layer pools over depends on the layer input:
For time series and vector sequence input (data with three dimensions corresponding to the
"C"(channel),"B"(batch), and"T"(time) dimensions), the layer pools over the"T"(time) dimension.For 1-D image input (data with three dimensions corresponding to the
"S"(spatial),"C"(channel), and"B"(batch) dimensions), the layer pools over the"S"(spatial) dimension.For 1-D image sequence input (data with four dimensions corresponding to the
"S"(spatial),"C"(channel),"B"(batch), and"T"(time) dimensions), the layer pools over the"S"(spatial) dimension.
Creation
Description
creates a 1-D average pooling layer and sets the layer = averagePooling1dLayer(poolSize)PoolSize property.
also specifies the padding or sets the layer = averagePooling1dLayer(poolSize,Name=Value)Stride and Name properties using one or more
optional name-value arguments. For example,
averagePooling1dLayer(3,Padding=1,Stride=2) creates a 1-D average
pooling layer with a pool size of 3, a stride of 2,
and padding of size 1 on both the left and right of the input.
Name-Value Arguments
Properties
Examples
Algorithms
Extended Capabilities
Version History
Introduced in R2021b
See Also
trainnet | trainingOptions | dlnetwork | sequenceInputLayer | lstmLayer | bilstmLayer | gruLayer | convolution1dLayer | maxPooling1dLayer | globalMaxPooling1dLayer | globalAveragePooling1dLayer | exportNetworkToSimulink | Average Pooling 1D
Layer
Topics
- Sequence Classification Using 1-D Convolutions
- Sequence-to-Sequence Classification Using 1-D Convolutions
- Sequence Classification Using Deep Learning
- Sequence-to-Sequence Classification Using Deep Learning
- Sequence-to-Sequence Regression Using Deep Learning
- Time Series Forecasting Using Deep Learning
- Long Short-Term Memory Neural Networks
- List of Deep Learning Layers
- Deep Learning Tips and Tricks