Illumination normalization of face image based on illuminant direction estimation and improved Retinex.

Illumination normalization of face image for face recognition and facial expression recognition is one of the most frequent and difficult problems in image processing. In order to obtain a face image with normal illumination, our method firstly divides the input face image into sixteen local regions...

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Main Authors: Jizheng Yi, Xia Mao, Lijiang Chen, Yuli Xue, Alberto Rovetta, Catalin-Daniel Caleanu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0122200
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spelling doaj-14ad4bc3209446cc881da0ed79864c9b2021-03-03T20:05:54ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01104e012220010.1371/journal.pone.0122200Illumination normalization of face image based on illuminant direction estimation and improved Retinex.Jizheng YiXia MaoLijiang ChenYuli XueAlberto RovettaCatalin-Daniel CaleanuIllumination normalization of face image for face recognition and facial expression recognition is one of the most frequent and difficult problems in image processing. In order to obtain a face image with normal illumination, our method firstly divides the input face image into sixteen local regions and calculates the edge level percentage in each of them. Secondly, three local regions, which meet the requirements of lower complexity and larger average gray value, are selected to calculate the final illuminant direction according to the error function between the measured intensity and the calculated intensity, and the constraint function for an infinite light source model. After knowing the final illuminant direction of the input face image, the Retinex algorithm is improved from two aspects: (1) we optimize the surround function; (2) we intercept the values in both ends of histogram of face image, determine the range of gray levels, and stretch the range of gray levels into the dynamic range of display device. Finally, we achieve illumination normalization and get the final face image. Unlike previous illumination normalization approaches, the method proposed in this paper does not require any training step or any knowledge of 3D face and reflective surface model. The experimental results using extended Yale face database B and CMU-PIE show that our method achieves better normalization effect comparing with the existing techniques.https://doi.org/10.1371/journal.pone.0122200
collection DOAJ
language English
format Article
sources DOAJ
author Jizheng Yi
Xia Mao
Lijiang Chen
Yuli Xue
Alberto Rovetta
Catalin-Daniel Caleanu
spellingShingle Jizheng Yi
Xia Mao
Lijiang Chen
Yuli Xue
Alberto Rovetta
Catalin-Daniel Caleanu
Illumination normalization of face image based on illuminant direction estimation and improved Retinex.
PLoS ONE
author_facet Jizheng Yi
Xia Mao
Lijiang Chen
Yuli Xue
Alberto Rovetta
Catalin-Daniel Caleanu
author_sort Jizheng Yi
title Illumination normalization of face image based on illuminant direction estimation and improved Retinex.
title_short Illumination normalization of face image based on illuminant direction estimation and improved Retinex.
title_full Illumination normalization of face image based on illuminant direction estimation and improved Retinex.
title_fullStr Illumination normalization of face image based on illuminant direction estimation and improved Retinex.
title_full_unstemmed Illumination normalization of face image based on illuminant direction estimation and improved Retinex.
title_sort illumination normalization of face image based on illuminant direction estimation and improved retinex.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Illumination normalization of face image for face recognition and facial expression recognition is one of the most frequent and difficult problems in image processing. In order to obtain a face image with normal illumination, our method firstly divides the input face image into sixteen local regions and calculates the edge level percentage in each of them. Secondly, three local regions, which meet the requirements of lower complexity and larger average gray value, are selected to calculate the final illuminant direction according to the error function between the measured intensity and the calculated intensity, and the constraint function for an infinite light source model. After knowing the final illuminant direction of the input face image, the Retinex algorithm is improved from two aspects: (1) we optimize the surround function; (2) we intercept the values in both ends of histogram of face image, determine the range of gray levels, and stretch the range of gray levels into the dynamic range of display device. Finally, we achieve illumination normalization and get the final face image. Unlike previous illumination normalization approaches, the method proposed in this paper does not require any training step or any knowledge of 3D face and reflective surface model. The experimental results using extended Yale face database B and CMU-PIE show that our method achieves better normalization effect comparing with the existing techniques.
url https://doi.org/10.1371/journal.pone.0122200
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