sustaining_gazes/matlab_version/AU_training/experiments/DISFA/Script_HOG_SVM_train_stat.m

56 lines
1.7 KiB
Matlab

% Change to your downloaded location
clear
addpath('C:\liblinear\matlab')
addpath('../training_code')
addpath('../utilities')
%% load shared definitions and AU data
shared_defs;
% Set up the hyperparameters to be validated
hyperparams.c = 10.^(-7:1:1);
hyperparams.e = 10.^(-3);
hyperparams.validate_params = {'c', 'e'};
% Set the training function
svr_train = @svm_train_linear;
% Set the test function (the first output will be used for validation)
svr_test = @svm_test_linear;
%%
for a=1:numel(aus)
au = aus(a);
rest_aus = setdiff(all_aus, au);
% make sure validation data's labels are balanced
[users_train, users_valid] = get_balanced_fold(DISFA_dir, users, au, 1/3, 1);
% need to split the rest
[train_samples, train_labels, valid_samples, valid_labels, ~, PC, means, scaling, valid_ids, valid_success] = Prepare_HOG_AU_data_generic(users_train, users_valid, au, rest_aus, DISFA_dir, hog_data_dir);
train_labels(train_labels > 1) = 1;
valid_labels(valid_labels > 1) = 1;
train_samples = sparse(train_samples);
valid_samples = sparse(valid_samples);
%% Validate here
hyperparams.success = valid_success;
[ best_params, ~ ] = validate_grid_search_no_par(svr_train, svr_test, false, train_samples, train_labels, valid_samples, valid_labels, hyperparams);
model = svr_train(train_labels, train_samples, best_params);
[~, prediction] = svr_test(valid_labels, valid_samples, model);
name = sprintf('classifiers/AU_%d_stat.mat', au);
[ accuracies, F1s, corrs, ccc, rms, classes ] = evaluate_regression_results( prediction, valid_labels );
save(name, 'model', 'accuracies', 'F1s', 'corrs', 'rms', 'ccc', 'prediction', 'valid_labels');
end