Is it possible to implement a LSTM layer after a CNN layer?

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Sofía
Sofía el 26 de Abr. de 2018
Comentada: krishna Chauhan el 26 de Jun. de 2020
I'm trying to implement a CNN layer + a LSTM layer, but I have an error: "Network: Incompatible layer types". Is it not possible to implement this combination in MATLAB or am I just writing it not properly?
My code:
layers = [ ...
sequenceInputLayer(inputSize)
convolution2dLayer(3,8,'Padding','same')
batchNormalizationLayer
reluLayer
maxPooling2dLayer(2,'Stride',2)
lstmLayer(numHiddenUnits,'OutputMode','last')
fullyConnectedLayer(numClasses)
softmaxLayer
classificationLayer
];
Error:
Error using trainNetwork (line 154)
Invalid network.
Caused by:
Network: Incompatible layer types. The network contains layer types not supported with recurrent layers.
Detected recurrent layers:
layer 6 (LSTM)
Detected incompatible layers:
layer 2 (Convolution)
layer 3 (Batch Normalization)
layer 5 (Max Pooling)
Layer 2: Input size mismatch. Size of input to this layer is different from the expected input size.
Inputs to this layer:
from layer 1 (output size 500)

Respuesta aceptada

Mona
Mona el 19 de Sept. de 2018
As far as I know, no, you can't combine the two. You can train a CNN independently on your training data, then use the learned features as an input to your LSTM. However, learning and updating CNN weights while training an LSTM is unfortunately not possible.
  1 comentario
krishna Chauhan
krishna Chauhan el 26 de Jun. de 2020
Maam can i store the weights after say a number of epochs of CNN and then use those weights as input to LSTM?

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Más respuestas (4)

charu
charu el 9 de Jul. de 2018
use bilstmLayer layer instead of lstm layer as in example
inputSize = 12;
numHiddenUnits = 100;
numClasses = 9;
layers = [ ...
sequenceInputLayer(inputSize)
bilstmLayer(numHiddenUnits,'OutputMode','last')
fullyConnectedLayer(numClasses)
softmaxLayer
classificationLayer]
  1 comentario
Guillaume  JUBIEN
Guillaume JUBIEN el 3 de Sept. de 2018
I have the same problem by using a bilstm Layer. The error message is :
if true
Error using trainNetwork (line 154)
Invalid network.
Error in test_spa_REG (line 168)
net = trainNetwork(XTR,TTR,Layers,options);
Caused by:
Network: Incompatible layer types. The network contains layer types not supported with recurrent layers.
Detected recurrent layers:
layer 9 (BiLSTM)
Detected incompatible layers:
layer 1 (Image Input)
layer 2 (Transposed Convolution)
layer 'temp1' (Convolution)
layer 5 (Average Pooling)
and 1 other layers.
Layer 10: Input size mismatch. Size of input to this layer is different from the expected input size.
Inputs to this layer:
from layer 9 (output size 20)
Is it possible to combine CNN with LSTM layer ?

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Shounak Mitra
Shounak Mitra el 11 de Jul. de 2019
Hello Everyone,
As of 19a, MATLAB supports workflows containing both CNN and LSTM layers.
Please check the link that contains an example showing the CNN+LSTM workflow --> https://www.mathworks.com/help/deeplearning/examples/classify-videos-using-deep-learning.html
  2 comentarios
Bhavna Rajasekaran
Bhavna Rajasekaran el 8 de Nov. de 2019
Editada: Bhavna Rajasekaran el 8 de Nov. de 2019
Is it possible to implement LSTM regression on an image (N-by-M array) such that the output is also a 2-dimesional array? Which means that the Predictors are an N-by-M array of sequences?
suraj sahoo
suraj sahoo el 11 de Nov. de 2019
Is the CNN+lstm layer trainable?

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sotiraw sotiroglou
sotiraw sotiroglou el 24 de Mzo. de 2019
Matlab 2019a is out. And it claims it can do this cnn - rnn combination.
Could someone give us an example?

sotiraw sotiroglou
sotiraw sotiroglou el 24 de Mzo. de 2019
Matlab 2019a is out there , and it claims it can do this rnn cnn combination.
I dont know the details, but i write this answer to encourage everyone with the same issue to search and maybe help with an example

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