Extracting features from one layer of dlnetwork model MATLAB 2023a

10 vues (au cours des 30 derniers jours)
MAHMOUD EID
MAHMOUD EID le 11 Avr 2023
Commenté : MAHMOUD EID le 22 Avr 2023
I have used the multi-input CNN network example on the following link :
After the traing and getting the predction, I need to extract the features from one of the max pooling layers of the dlnet model.
Can you help by writing the code to do so?
I have tried to use activations function with the dlnet model but not working
for example, using activation with SeriesNetwork or DAGNetwor , the code is
layer = "pool10";
featuresTrain = activations(net,augimdsTrain,layer,OutputAs="rows");
featuresTest = activations(net,augimdsTest,layer,OutputAs="rows");
What is the code to do the same if I have dlnetwork model?

Réponses (1)

V Sairam Reddy
V Sairam Reddy le 19 Avr 2023
Hi Mahmoud,
I understand that you want a way to visualise the activations in a dl network.
The 'activations' function in MATLAB is however only supported in SeriesNetwork or DAGNetwork object. Instead you can use the 'foward' function to get the activations in a dl network.
Please find the attached code below:
features = forward(dlNetwork, dlArray, 'Outputs', layerName);
% In your case:
features = forward(dlnet, dlarray(single(XUpper),'SSCB'), 'Outputs', 'pool10');
To know more about the forward function, please check the following link from the documentation:
https://www.mathworks.com/help/deeplearning/ref/dlnetwork.forward.html
  1 commentaire
MAHMOUD EID
MAHMOUD EID le 22 Avr 2023
Hi. The issue is how to pass the two inputs to the command predict. when I run the mentioned command , I have recived this error message @V Sairam Reddy
Error using deep.internal.network.dlnetwork/validateForwardInputs
Incorrect number of network inputs. Network has 2 inputs, but 1 inputs were passed.

Connectez-vous pour commenter.

Catégories

En savoir plus sur Deep Learning Toolbox dans Help Center et File Exchange

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by