function [meanError, all_rot_preds, all_rot_gts, meanErrors, all_errors, rels_all, seq_ids] = calcIctError(resDir, gtDir) %CALCICTERROR Summary of this function goes here % Detailed explanation goes here polhemus = 'polhemusNorm.csv'; sequences = dir([resDir '*.csv']); rotMeanErr = zeros(numel(sequences),3); rotRMS = zeros(numel(sequences),3); rot = cell(1,numel(sequences)); rotg = cell(1,numel(sequences)); rels_all = []; seq_ids = {}; for i = 1:numel(sequences) [~, name,~] = fileparts(sequences(i).name); fname = [resDir '/' sequences(i).name]; if(i == 1) % First read in the column names tab = readtable(fname); column_names = tab.Properties.VariableNames; confidence_id = cellfun(@(x) ~isempty(x) && x==1, strfind(column_names, 'confidence')); rot_ids = cellfun(@(x) ~isempty(x) && x==1, strfind(column_names, 'pose_R')); end all_params = dlmread(fname, ',', 1, 0); rot{i} = all_params(:, rot_ids); rels = all_params(:, confidence_id); % the reliabilities of head pose rels_all = cat(1, rels_all, rels); [txg tyg tzg rxg ryg rzg] = textread([gtDir name '/' polhemus], '%f,%f,%f,%f,%f,%f'); rotg{i} = [rxg ryg rzg]; % Correct the first frame so it corresponds to (0,0,0), as slightly % different pose might be assumed frontal and this corrects for % that % Work out the correction matrix for ground truth rot_corr_gt = Euler2Rot(rotg{i}(1,:)); for r_e = 1:size(rotg{i},1) rot_curr_gt = Euler2Rot(rotg{i}(r_e,:)); rot_new_gt = rot_corr_gt' * rot_curr_gt; rotg{i}(r_e,:) = Rot2Euler(rot_new_gt); end % Work out the correction matrix for estimates rot_corr_est = Euler2Rot(rot{i}(1,:)); for r_e = 1:size(rot{i},1) rot_curr_est = Euler2Rot(rot{i}(r_e,:)); rot_new_est = rot_corr_est' * rot_curr_est; rot{i}(r_e,:) = Rot2Euler(rot_new_est); end % Convert the ground truth and estimates to degrees rot{i} = rot{i} * (180/ pi); rotg{i} = rotg{i} * (180/ pi); % Now compute the errors rotMeanErr(i,:) = mean(abs((rot{i}(:,:)-rotg{i}(:,:)))); rotRMS(i,:) = sqrt(mean(((rot{i}(:,:)-rotg{i}(:,:))).^2)); seq_ids = cat(1, seq_ids, repmat({[name 'ict']}, size(rot{i},1), 1)); end allRot = cell2mat(rot'); allRotg = cell2mat(rotg'); meanErrors = rotMeanErr; meanError = mean(abs((allRot(:,:)-allRotg(:,:)))); all_errors = abs(allRot-allRotg); rmsError = sqrt(mean(((allRot(:,:)-allRotg(:,:))).^2)); errorVariance = var(abs((allRot(:,:)-allRotg(:,:)))); all_rot_preds = allRot; all_rot_gts = allRotg; end