Implementing speech emotion recognition using CNN

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Hello everyone, I'm working on speech emotion recognition. I have a training matrix of size 60,000 x 39 and a label matrix of size 60,000 x 1. I would like to implement a Convolutional Neural Network (CNN). I've tried the code below, but it didn't work well. I believe I may have missed something. Could anyone please help me?
%% CNN
layers = [
imageInputLayer([39 1 1])
convolution2dLayer(3,16,'Padding','same')
reluLayer
fullyConnectedLayer(384) % 384 refers to number of neurons in next FC hidden layer
fullyConnectedLayer(384) % 384 refers to number of neurons in next FC hidden layer
fullyConnectedLayer(7) % refers to number of neurons in next output layer (number of output classes)
softmaxLayer
classificationLayer];
options = trainingOptions('sgdm',...
'MaxEpochs',500, ...
'Verbose',false,...
'Plots','training-progress');
XTrain=reshape(mfcc_matrix_app, [39,1,1,60575]);
test=reshape(mfcc_matrix_app, [39,1,1,30000]);
targetD=categorical(CA);
net = trainNetwork(XTrain,targetD,layers,options);
predictedLabels = classify(net,test);

Accepted Answer

Neha
Neha on 18 Oct 2023
Hi Hamza,
I understand that you want to implement speech emotion recognition using CNN. Here are a few suggestions to improve the performance of the model:
As a part of audio pre-processing, you can implement feature extraction and audio augmentation techniques before passing the data to the CNN model.
You can first extract features like ZCR (Zero Crossing Rate), MFCC (Mel-Frequency Cepstral Coefficients) and Mel Spectrum using the "audioFeatureExtractor" function. You can refer to the following documentation link for more information on the function:
Followed by feature extraction, you can augment the audio by adding noise, stretching and shifting the pitch using the "audioDataAugmenter" function. You can refer to the following documentation link for more information on the function:
You can also encode the data labels into one-hot vectors using the "onehotencode" function:
In the network architecture, you can include batch normalization layers, dropout layers and max pooling layers as well for faster convergence and regularization. You can refer to the following code snippet for reference:
Also, your maximum number of epochs is set to 500, which might be too high and could lead to overfitting. You might want to consider using early stopping to prevent this. You can introduce "ValidationData", "ValidationFrequency" and "ValidationPatience" training options for validation stopping. You can refer to the following documentation link for more information on specifying training options:
Hope this helps!

More Answers (1)

young
young on 8 Apr 2024
Hi Hamza,
May I ask if you have solved this problem. I am doing a similar SER project. I extract features like MFCC, Mel, Pitch and Intensity. Then, I got a traing matrix of size 936x1 cell (200x1 double in every cell) and a label matrix of size 1x936 categorical.
The .mat is attached
My 1dCNN code is like below.
load('audio_features.mat', 'X_train', 'X_test', 'y_train', 'y_test');
x_traincnn = num2cell(X_train, 2);
y_traincnn = categorical(y_train.');
x_testcnn = num2cell(X_test, 2);
y_testcnn = categorical(y_test.');
x_traincnn = cellfun(@(x) x', x_traincnn, 'UniformOutput', false);
x_testcnn = cellfun(@(x) x', x_testcnn, 'UniformOutput', false);
disp(size(x_traincnn));
disp(size(x_testcnn));
disp(size(y_traincnn));
disp(size(y_testcnn));
numFeatures = 200;
numClasses = numel(categories(y_train));
filterSize = 5;
numFilters = 32;
rng('default');
layers = [ ...
sequenceInputLayer(numFeatures)
convolution1dLayer(filterSize,numFilters,Padding="causal")
reluLayer
layerNormalizationLayer
convolution1dLayer(filterSize,2*numFilters,Padding="causal")
reluLayer
layerNormalizationLayer
globalAveragePooling1dLayer
fullyConnectedLayer(numClasses)
softmaxLayer
classificationLayer];
miniBatchSize = 27;
options = trainingOptions("adam", ...
MaxEpochs=200, ...
InitialLearnRate=0.01, ...
SequencePaddingDirection="left", ...
ValidationData={x_testcnn,y_testcnn}, ...
Plots="training-progress", ...
Verbose=0);
net = trainNetwork(x_traincnn, y_traincnn, layers, options);
YPred = classify(net,x_testcnn, ...
SequencePaddingDirection="left");
acc = mean(YPred == y_testcnn);
disp(["Accuracy: ", acc]);
confMat = confusionmat(y_testcnn, YPred);
disp(confMat);
figure;
confusionchart(y_testcnn,YPred);
The output is :

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