How to do feature extraction using wavelet scattering and then perform neural network classification?

8 vues (au cours des 30 derniers jours)
% I want to do feature extraction for signals and then apply ANN classification on them,, can you help please?
Fs = 50; sf = waveletScattering('SignalLength', 4950, 'SamplingFrequency', Fs) ;
s = cell(120,1); parfor j = 1:120; r = featureMatrix(sf, f(j, :)) ; s{j, 1} = r; end
h = cell2mat(s) ; b = cell2table(s) ; c = table2dataset(b);
%the single signal was in one row, but after this it becomes 202rows×10columns, and I can't apply ANN like this Any ideas?

Réponses (1)

Suraj Kumar
Suraj Kumar le 7 Oct 2024
Hi Mustafa,
To perform feature extraction using wavelet scattering on signals and then apply ANN classification, you can refer to the following steps:
1. After storing the features in cell array "s", you can convert them into a matrix "featureVectors" suitable for ANN.
% Convert cell array to feature matrix
for i = 1:numSignals
featureVectors(i, :) = s{i}(:)';
end
2. Configure and train the neural network using fitcnetfunction specifying the required parameters. % Train the neural
network net = fitcnet(featureVectors, targetsCategorical, ...
'LayerSizes', hiddenLayerSize, ...
'Standardize', true, ...
'Options', options);
To learn more about fitcnetfunction in MATLAB, refer the below mentioned documentation:
Hope this resolves your query!

Catégories

En savoir plus sur AI for Signals and Images 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!

Translated by