why do I get the error Undefined function or variable 'net'. Error in testalexnet1 (line 16) trainingFeatures = activation​s(net,trai​ningImages​,layer);

12 views (last 30 days)
I am trying to create my own image data store and this is my code
trainingFeatures = activations(net,trainingImages,layer);
  4 Comments
Hridya PI
Hridya PI on 18 Dec 2017
Edited: Walter Roberson on 18 Dec 2017
imds1 = imageDatastore(fullfile(matlabroot,'toolbox','matlab','images','New Folder'),...
'IncludeSubfolders',true,'FileExtensions','.jpg','LabelSource','foldernames')
%data = read(imds)
Hridya PI
Hridya PI on 18 Dec 2017
Edited: Walter Roberson on 18 Dec 2017
[trainingImages,testImages] = splitEachLabel(imds1,0.7,'randomized');
numTrainImages = numel(trainingImages.Labels);
idx = randperm(numTrainImages,11);
figure
for i = 1:11
subplot(4,4,i)
I = readimage(trainingImages,idx(i));
imshow(I)
end
layer = 'fc7';
trainingFeatures = activations(net,trainingImages,layer);
testFeatures = activations(net,testImages,layer);
trainingLabels = trainingImages.Labels;
testLabels = testImages.Labels;
classifier = fitcecoc(trainingFeatures,trainingLabels);
predictedLabels = predict(classifier,testFeatures);idx = [1 5 10 15];
figure
for i = 1:numel(idx)
subplot(2,2,i)
I = readimage(testImages,idx(i));
label = predictedLabels(idx(i));
imshow(I)
title(char(label))
end

Sign in to comment.

Accepted Answer

Walter Roberson
Walter Roberson on 18 Dec 2017
Considering the name of your file testalexnet1 it appears that you missed
net = alexnet;

More Answers (1)

Hridya PI
Hridya PI on 19 Dec 2017
Edited: Walter Roberson on 19 Dec 2017
Error using SeriesNetwork/activations (line 794)
'OutputAs' must be 'channels' to use activations on images larger than the network's imageInputLayer.InputSize.
Error in testalexnet1 (line 17)
trainingFeatures = activations(net,trainingImages,layer);
now this is the error .
i changed the line of code as
trainingFeatures = activations(net,trainingImages,layer,'outputAs','channels');
is this right?
  7 Comments
Hridya PI
Hridya PI on 30 Dec 2017
Edited: Walter Roberson on 30 Dec 2017
Now, I completed the Alexnet Training with my dataset. How I can input an image and make the network predict it? I tried the code below.Butb it takes tha classnames of the pretrained network.Not the classnames that I newly created.
img= imread('D:\as.jpg');
img = imresize(I,[227 227]);
label = classify(net,img)
figure
imshow(img)
title(char(label))
and also the code
net.Layers(end).ClassNames(1:6)
gives the classnames of pretrained network only. What should I do to give an input to the net. Please help

Sign in to comment.

Categories

Find more on Image Data Workflows in Help Center and File Exchange

Community Treasure Hunt

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

Start Hunting!