Classification of AlexNet deep dreams is always wrong (always nematode)
I followed up the tutorial about AlexNet deep dreams and let the network dreamed about 'daisy' (index 986)
net = alexnet; I = deepDreamImage(net,23,986);
Now, documentation says that image 'I' highlights the features learned by a network. I thought that this dreamed image should be classified as selected channel (daisy in my case), but it is not:
I_resized = imresize(I,[227 227]); classify(net,I_resized) >> ans = categorical nematode
Moreover dreams of ALL channels are classified as 'nematode' :
net = alexnet; %% num_of_classes = 10; classifications = cell(1000,num_of_classes); scores = zeros(1000,num_of_classes); I_dreamed = zeros(227,227,3,1000);
for class_i = 1:1000 I = deepDreamImage(net,23,class_i); I_resized = imresize(I,[227 227]);% resize for classification I_dreamed(:,:,:,class_i) = I_resized;
p = predict(net,I_resized); [p3,i3] = maxk(p,num_of_classes);%get first N classes with strongest response
classifications(class_i,:)=net.Layers(end).ClassNames(i3);% save classes names scores(class_i,:) = p3; % save scores end
'classifications' variable is same in every row: 'nematode' 'spotlight' 'fire screen' 'stove' 'volcano' 'digital clock' 'matchstick' 'wing' 'lampshade' 'window screen'
'scores' are not same, but very similar.
(I also tried different (1000 and 10 000) 'NumIterations', and classification was still nematode )
Why isn't "daisy dream" classified as daisy? Why is everything classified as 'nematode'?
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