2017 IEEE Winter Conference on Applications of Computer Vision (WACV) 2017
DOI: 10.1109/wacv.2017.133
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Gender-from-Iris or Gender-from-Mascara?

Abstract: Predicting a person's gender based on the iris texture has been explored by several researchers. This paper considers several dimensions of experimental work on this problem, including person-disjoint train and test, and the effect of cosmetics on eyelash occlusion and imperfect segmentation. We also consider the use of multi-layer perceptron and convolutional neural networks as classifiers, comparing the use of data-driven and hand-crafted features. Our results suggest that the gender-from-iris problem is mor… Show more

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Cited by 40 publications
(45 citation statements)
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References 14 publications
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“…At the same time, performing classification exclusively on the eyebrow images yielded accuracies from 80-95%. Although this work seems to have been conducted independently and not focused on iris, its results seem to confirm findings of [2,3] and [8], suggesting a majority of gender cues could be located around the eye.…”
Section: Related Worksupporting
confidence: 55%
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“…At the same time, performing classification exclusively on the eyebrow images yielded accuracies from 80-95%. Although this work seems to have been conducted independently and not focused on iris, its results seem to confirm findings of [2,3] and [8], suggesting a majority of gender cues could be located around the eye.…”
Section: Related Worksupporting
confidence: 55%
“…In [16], SVM classification using the IrisCode as features was reported to achieve 85% accuracy, on disjoint train and test partitions. On the other hand, [8] takes a more attentive look at evaluation methodology, and finds out that reporting accuracy from a single random train/test split may give rise to biased results. Their accuracy, averaged over 10 repetitions on random disjoint train/test partitions was 66%.…”
Section: Related Workmentioning
confidence: 99%
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“…Some research has utilised uniform patterns or combined uniform patterns with non-uniform patterns to improve per-formance [38,27]. A small number of methods have used Deep Learning on Soft-biometrics such as gender with periocular NIR images [18,34,28].…”
Section: Related Work 21 Gender Classificationmentioning
confidence: 99%
“…Such soft-biometric features within the periocular region are vital for robust sex-prediction. Nevertheless, it is important to note that subjects can take influence on said features and classification performance is expected to drop if these are absent [16].…”
Section: Performance Evaluationmentioning
confidence: 99%