How to concatenate features from one fullyConnectedLayer in a DNN with inputs being images from one class and features from the second class for classifier training?training?
4 vues (au cours des 30 derniers jours)
Afficher commentaires plus anciens
%temp2.m
imageInputSize = [28,28,1];
filterSize = 3;
numFilters = 8;
numClasses = 10;
numFeatures = 50;
layers = [
imageInputLayer(imageInputSize,'Normalization','none','Name','images')
convolution2dLayer(filterSize,numFilters,'Name','conv')
reluLayer('Name','relu')
fullyConnectedLayer(50,'Name','fc1')%1 x 1 x 50 x N
squeezeLayer()%50 x N
concatenationLayer(2,2,'Name','cat')
fullyConnectedLayer(numClasses,'Name','fc2')
softmaxLayer('Name','softmax')
classificationLayer];
lgraph = layerGraph(layers);
featInput = featureInputLayer(numFeatures,Name="features");%3 x N
lgraph = addLayers(lgraph,featInput);
lgraph = connectLayers(lgraph,"features","cat/in2");
numObservations = 100;
fakeImages = randn([imageInputSize,numObservations]);%28 28 1 100
imagesDS = arrayDatastore(fakeImages,IterationDimension=4);
fakeFeatures = randn([numFeatures,numObservations]);%100 x 50
featureDS = arrayDatastore(fakeFeatures,IterationDimension=2);%50x100
fakeTargets = categorical(mod(1:2*numObservations,numClasses));%1x100
targetDS = arrayDatastore(fakeTargets,IterationDimension=2);
ds = combine(imagesDS,featureDS,targetDS);
opts = trainingOptions("adam","MaxEpochs",1,"MiniBatchSize",128);
net=trainNetwork(ds,lgraph,opts);
function layer = squeezeLayer(args)
arguments
args.Name='';
end
layer = functionLayer(@squeezeLayerFcn,"Name",args.Name,"Formattable",true);
end
function x = squeezeLayerFcn(x)
x = squeeze(x);
% Since squeeze will squeeze out some dimensions, we need to relabel x.
% Assumption: x does not have a 'T' dimension.
n = ndims(x);
newdims = [repelem('S',n-2),'CB'];
x = dlarray(x,newdims);
%dims(x)
end
Error in temp2 (line 35)
net=trainNetwork(ds,lgraph,opts);
Caused by:
Layer 'cat': Input size mismatch. Size of input to this layer is different from the expected input size.
Inputs to this layer:
from layer 'layer' (size 50(C) × 1(B))
from layer 'features' (size 50(C) × 1(B))
0 commentaires
Réponses (1)
Ranjeet
le 14 Avr 2023
Hi Ming,
Assuming that you want to concatenate ‘features’ and output of ‘squeezeLayer’, changing the 1st argument of concatenationLayer((2,2,'Name','cat') to concatenationLayer((1,2,'Name','cat') should solve the issue regarding input size mismatch.
Moreover, you can use analyzeNetwork that does the network analysis and present any error by plotting the network. For your case, you can use analyzeNetwork(lgraph).
0 commentaires
Voir également
Catégories
En savoir plus sur Get Started with 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!