How to Classify New Dataset using Two trained models

I have trained two models on a dataset
I want to Classify new data using the both the trained model. But Classify take one trained network. How can i do that?
Resnet50.mat
Resnet18.mat
rxTestPred = classify(resnet.trainedNet,rxTestFrames);
testAccuracy = mean(rxTestPred == rxTestLabels);
disp("Test accuracy: " + testAccuracy*100 + "%")

2 Comments

Question is not clear. What problem you have in using the trained model ofr new data?
@KSSV I want to Classify rxTestFrames using Two trained Model one is Resnet18 and other is Resnet50

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Answers (1)

yes,sir,may be use different load variable,such as
net1 = load('Resnet50.mat')
net2 = load('Resnet18.mat')
rxTestPred = classify(net1.resnet.trainedNet,rxTestFrames);
testAccuracy = mean(rxTestPred == rxTestLabels);
disp("Resnet50 Test accuracy: " + testAccuracy*100 + "%")
rxTestPred = classify(net2.resnet.trainedNet,rxTestFrames);
testAccuracy = mean(rxTestPred == rxTestLabels);
disp("Resnet18 Test accuracy: " + testAccuracy*100 + "%")

3 Comments

@yanqi but the prediction are different, i want two models to give combine prediction. Not each model to give its prediction like you can say ensemble learning /majority voting
please i ask if you reach to how implement ensemble learning in matlab ?? as i need to perform ensemble learning between more than three different networks
See this page for information on how to work with multi-input multi-output networks in MATLAB: Multiple-Input and Multiple-Output Networks

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Release

R2021b

Asked:

on 28 Jan 2022

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