Unconstrained face recognition

Book chapter


Zafeiriou, S., Kotsia, I. and Pantic, M. 2018. Unconstrained face recognition. in: Management Association, I. (ed.) Computer Vision: Concepts, Methodologies, Tools, and Applications Hershey, PA IGI Global. pp. 1640-1661
Chapter titleUnconstrained face recognition
AuthorsZafeiriou, S., Kotsia, I. and Pantic, M.
Abstract

The human face is the most well-researched object in computer vision, mainly because (1) it is a highly deformable object whose appearance changes dramatically under different poses, expressions, and, illuminations, etc., (2) the applications of face recognition are numerous and span several fields, (3) it is widely known that humans possess the ability to perform, extremely efficiently and accurately, facial analysis, especially identity recognition. Although a lot of research has been conducted in the past years, the problem of face recognition using images captured in uncontrolled environments including several illumination and/or pose variations still remains open. This is also attributed to the existence of outliers (such as partial occlusion, cosmetics, eyeglasses, etc.) or changes due to age. In this chapter, the authors provide an overview of the existing fully automatic face recognition technologies for uncontrolled scenarios. They present the existing databases and summarize the challenges that arise in such scenarios and conclude by presenting the opportunities that exist in the field.

Page range1640-1661
Book titleComputer Vision: Concepts, Methodologies, Tools, and Applications
EditorsManagement Association, I.
PublisherIGI Global
Place of publicationHershey, PA
ISBN
Hardcover9781522552048
Electronic9781522552055
Publication dates
Print2018
Publication process dates
Deposited18 Oct 2019
Output statusPublished
Digital Object Identifier (DOI)https://doi.org/10.4018/978-1-5225-5204-8.ch068
LanguageEnglish
JournalComputer Vision
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