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 [BibTeX] [Marc21]
Impact of Eye Detection Error on Face Recognition Performance
Type of publication: Journal paper
Citation: Dutta_IETBIOMETRICS_2014
Publication status: Published
Journal: IET Biometrics
Year: 2015
Month: January
ISSN: 2047-4938
URL: http://digital-library.theiet....
Abstract: The location of the eyes is the most commonly used features to perform face normalization (i.e., alignment of facial features), which is an essential preprocessing stage of many face recognition systems. In this paper, we study the sensitivity of open source implementations of five face recognition algorithms to misalignment caused by eye localization errors. We investigate the ambiguity in location f the eyes by comparing the difference between two independent manual eye annotations. We also study the error characteristics of automatic eye detectors present in two commercial face recognition systems. Furthermore, we explore the impact of using different eye detectors for training/enrollment and query phases of a face recognition system. These experiments provide an insight into the influence of eye localization errors on the performance of face recognition systems.
Keywords: automatic eye detectors, commercial face recognition systems, error characteristics, eye detection, eye localization errors, face normalization, face recognition algorithms, face recognition performance, facial feature alignment, manual eye annotations, open source implementations, query phases
Projects BBfor2
Idiap
Authors Dutta, Abhishek
Günther, Manuel
El Shafey, Laurent
Marcel, Sébastien
Veldhuis, Raymond
Spreeuwers, Luuk
Added by: [UNK]
Total mark: 0
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  • Dutta_IETBIOMETRICS_2014.pdf
Notes