% Tema PS 2021 % Autor: Andrei Nicolicioiu clear all close all % [audio_train,labels_train, audio_test,labels_test] = load_data(); load('data.mat') plot_figs = true % For faster results use just a fraction of each audio file % The results will be poorer but the speed would improve % select a fraction of alpha percents of each file alpha = 1 / 1000; b = floor(size(audio_train,1) / 2 - alpha * size(audio_train,1) / 2 + 1); e = floor(size(audio_train,1) / 2 + alpha * size(audio_train,1) / 2); audio_train_small = audio_train(b:e,:); b = floor(size(audio_train,1) / 2 - alpha * size(audio_train,1) / 2 + 1); e = floor(size(audio_train,1) / 2 + alpha * size(audio_train,1) / 2); audio_test_small = audio_test(b:e,:); % calculam vectorii de trasaturi pentru fiecare fisier din datasetul de train si de test % get_features primeste toate sunetele din set date intr-o matrice (audio_train) % de dimensiune: numar_ensantioane x numar_sunete si returnează toate % featurile acestor sunete intr-o matrice (feat_train) de dimensiune numar_sunete x (2*M) % alaturi de setul de filtre h folosite (filters) reprezentat de o matrice de dimeniune K x M % TODO: calculati featurile folosind un set de M filtre Gammatone % plot_figs == true afisati figurile cerute in tema [filters, feat_train] = get_features(audio_train, fs, plot_figs); [filters, feat_test] = get_features(audio_test, fs, plot_figs); % size(audio_train) = numar_ensantioane x numar_sunete = 160704 x 300 % size(feat_train) = numar_sunete x (2*M) = 300 x 24 % size(filters) = K x M % antrenam un clasificator model = train_sc(feat_train,labels_train,'LDA'); % prezicem clasele pentru datasetul de train si de test results_train = test_sc(model,feat_train); results_test = test_sc(model,feat_test); % calculam acuratetea pe train si test acc_train = mean(results_train.classlabel(:) == labels_train(:)); acc_test = mean(results_test.classlabel(:) == labels_test(:)); sprintf('Accuracy on train: %0.2f', acc_train) sprintf('Accuracy on test: %0.2f', acc_test) % TODO: verificati calitativ cateva exemple din setul de test. % comparati clasa corecta si clasa presiza cu sunetul auzit % alegem random un fisier audio si verificam daca am clasificat corect % labels_name = ["Dog"; "Rooster"; "Rain" ; "Waves"; "Fire"; "Baby"; ... % "Sneezing"; "Clock"; "Helicopter"; "Chainsow"]; % % r = round(rand() * 100); % sound(audio_test(:,r),fs); % sprintf('Clasa corecta: %s', labels_name(labels_test(r),:)) % sprintf('Clasa prezisa: %s', labels_name(results_test.classlabel(r),:))