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change Matlab code to Python in LSTM and Deep Learning

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Pooyan Mobtahej
Pooyan Mobtahej el 1 de Mzo. de 2021
Comentada: INAM ULLAH el 23 de Sept. de 2022
I have a Matlab code for audio classification by using LSTM in Matlab which I need to impelent or convert to Python
Here is the code that I need to imoplement in Python ?
How can I convert it Do you have any suggestion for data importing part as well as applying LSTM?
clear all
close all
TrainRatio=0.1;
ValidationRatio=0.1;
folder='/Users/pooyan/Desktop/cmms/class/normal/'; % change this path to your normal data folder
audio_files=dir(fullfile(folder,'*.ogg'));
nfileNum=length(audio_files);
nfileNum=1000
normal=[];
for i = 3600:4599
normal_name = [folder audio_files(i).name];
normal(i-3599,:) = audioread(normal_name);
end
normal=normal';
nLabels = repelem(categorical("normal"),nfileNum,1);
folder='/Users/pooyan/Desktop/cmms/class/anomaly/'; % change this path to your anomaly data folder
audio_files=dir(fullfile(folder,'*.ogg'));
afileNum=length(audio_files);
afileNum=100
anomaly=[];
for i = 1:afileNum
anomaly_name = [folder audio_files(i).name];
anomaly(i,:) = audioread(anomaly_name);
end
anomaly=anomaly';
aLabels = repelem(categorical("anomaly"),afileNum,1);
% randomize the inputs if necessary
% normal=normal(:,randperm(nfileNum, nfileNum));
% anomaly=anomaly(:,randperm(afileNum, afileNum));
nTrainNum = round(nfileNum*TrainRatio);
aTrainNum = round(afileNum*TrainRatio);
nValidationNum = round(nfileNum*ValidationRatio);
aValidationNum = round(afileNum*ValidationRatio);
audioTrain = [normal(:,1:nTrainNum),anomaly(:,1:aTrainNum)];
labelsTrain = [nLabels(1:nTrainNum);aLabels(1:aTrainNum)];
audioValidation = [normal(:,nTrainNum+1:nTrainNum+nValidationNum),anomaly(:,aTrainNum+1:aTrainNum+aValidationNum)];
labelsValidation = [nLabels(nTrainNum+1:nTrainNum+nValidationNum);aLabels(aTrainNum+1:aTrainNum+aValidationNum)];
audioTest = [normal(:,nTrainNum+nValidationNum+1:end),anomaly(:,aTrainNum+aValidationNum+1:end)];
labelsTest = [nLabels(nTrainNum+nValidationNum+1:end); aLabels(aTrainNum+aValidationNum+1:end)];
fs=44100;
% Create an audioFeatureExtractor object
%to extract the centroid and slope of the mel spectrum over time.
aFE = audioFeatureExtractor("SampleRate",fs, ... %Fs
"SpectralDescriptorInput","melSpectrum", ...
"spectralCentroid",true, ...
"spectralSlope",true);
featuresTrain = extract(aFE,audioTrain);
[numHopsPerSequence,numFeatures,numSignals] = size(featuresTrain);
numHopsPerSequence;
numFeatures;
numSignals;
%treat the extracted features as sequences and use a
%sequenceInputLayer as the first layer of your deep learning model.
featuresTrain = permute(featuresTrain,[2,1,3]); %permute switching dimensions in array
featuresTrain = squeeze(num2cell(featuresTrain,[1,2]));%remove dimensions
numSignals = numel(featuresTrain); %number of signals of normal and anomalies
[numFeatures,numHopsPerSequence] = size(featuresTrain{1});
%Extract the validation features.
featuresValidation = extract(aFE,audioValidation);
featuresValidation = permute(featuresValidation,[2,1,3]);
featuresValidation = squeeze(num2cell(featuresValidation,[1,2]));
%Define the network architecture.
layers = [ ...
sequenceInputLayer(numFeatures)
lstmLayer(50,"OutputMode","last")
fullyConnectedLayer(numel(unique(labelsTrain))) %%labelTrain=audio
softmaxLayer
classificationLayer];
%To define the training options
options = trainingOptions("adam", ...
"Shuffle","every-epoch", ...
"ValidationData",{featuresValidation,labelsValidation}, ... %%labelValidatin=audioValidation
"Plots","training-progress", ...
"Verbose",false);
%To train the network
net = trainNetwork(featuresTrain,labelsTrain,layers,options);
%Test the network %10 preccent
%classify(net,permute(extract(aFE,audioTest),[2 257 35]))
TestFeature=extract(aFE, audioTest);
for i=1:size(TestFeature, 3)
TestFeatureIn = TestFeature(:,:,i)';
classify(net,TestFeatureIn)
predict(i) = classify(net,TestFeatureIn);
end
plotconfusion(labelsTest,predict')
  2 comentarios
Mrunal V Sontakke
Mrunal V Sontakke el 18 de Jun. de 2021
Did you get any solution to this?
INAM ULLAH
INAM ULLAH el 23 de Sept. de 2022
Did you get any solution for this?

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