| function [confusion, results] = evaluation(datasetPath, split, images, labels, scores) |
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| [images0, labels0] = textread(fullfile(datasetPath, ['images_' split '.txt']), '%7s%*1s%s', 'delimiter', '\n', 'whitespace', '') ; |
| [classes0, ~, y0] = unique(labels0) ; |
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| ok = true(size(labels)) ; |
| if isnumeric(labels) |
| y = labels ; |
| else |
| [~,y] = ismember(labels, classes0) ; |
| if any(y == 0) |
| for i = find(y == 0) |
| warning('Class %s not found in set of ground truth classes\n', labels{i}) ; |
| ok(i) = false ; |
| end |
| end |
| end |
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| if isnumeric(images) |
| x = images ; |
| else |
| [~, x] = ismember(images, images0) ; |
| if any(y == 0) |
| for i = find(y == 0) |
| warning('Image %s was not found in set of ground truth images\n', images{i}) ; |
| ok(i) = false ; |
| end |
| end |
| end |
| y0 = y0' ; |
| y = y(ok)' ; |
| x = x(ok)' ; |
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| numImages = numel(images0) ; |
| numClasses = numel(classes0) ; |
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| fprintf(' |
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| scorem = -inf(numClasses, numImages) ; |
| for y1 = 1:numClasses |
| scorem(y1, x(y == y1)) = scores(y == y1) ; |
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| [rc,pr,info] = vl_pr(2 * (y0 == y1) - 1, scorem(y1, :), 'IncludeInf', false) ; |
| results(y1).rc = rc ; |
| results(y1).pr = pr ; |
| results(y1).ap = info.ap ; |
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| [tp,tn,info] = vl_roc(2 * (y0 == y1) - 1, scorem(y1, :), 'IncludeInf', false) ; |
| results(y1).tp = tp ; |
| results(y1).tn = tn ; |
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| results(y1).roceer = info.eer ; |
| results(y1).name = classes0{y1} ; |
| results(y1).numGtSamples = sum(y0 == y1) ; |
| results(y1).numCandidates = sum(y == y1) ; |
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| fprintf('%s: %25s [%5d gt,%5d cands] AP %5.2f%%, ROC-EER %5.2f%%\n', ... |
| mfilename, ... |
| results(y1).name, ... |
| results(y1).numGtSamples, ... |
| results(y1).numCandidates, ... |
| results(y1).ap * 100, ... |
| results(y1).roceer * 100) ; |
| end |
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| confusion = zeros(numClasses) ; |
| [~, preds] = max([-inf(1, numImages) ; scorem]) ; |
| preds = preds - 1 ; |
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| for y1 = 1:numClasses |
| z = accumarray(preds(preds > 0 & y0 == y1)', 1, [numClasses 1])' ; |
| z = z/results(y1).numGtSamples ; |
| confusion(y1,:) = z ; |
| end |
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| fprintf('%s: mean accuracy: %.2f %%\n', mfilename, mean(diag(confusion))*100) ; |
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