Multiclient Identification System Using Adaptive Probabilistic Model

<p>Abstract</p> <p>This paper aims at integrating detection and identification of human faces in a more practical and real-time face recognition system. The proposed face detection system is based on the cascade Adaboost method to improve the precision and robustness toward unstabl...

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Main Authors: Shou Yu-Wen, Lin Chin-Teng, Siana Linda, Yang Chien-Ting
Format: Article
Language:English
Published: SpringerOpen 2010-01-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://asp.eurasipjournals.com/content/2010/983581
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spelling doaj-6f7d909fabd445d4919a26df47d49cef2020-11-24T20:57:55ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61721687-61802010-01-0120101983581Multiclient Identification System Using Adaptive Probabilistic ModelShou Yu-WenLin Chin-TengSiana LindaYang Chien-Ting<p>Abstract</p> <p>This paper aims at integrating detection and identification of human faces in a more practical and real-time face recognition system. The proposed face detection system is based on the cascade Adaboost method to improve the precision and robustness toward unstable surrounding lightings. Our Adaboost method innovates to adjust the environmental lighting conditions by histogram lighting normalization and to accurately locate the face regions by a region-based-clustering process as well. We also address on the problem of multi-scale faces in this paper by using 12 different scales of searching windows and 5 different orientations for each client in pursuit of the multi-view independent face identification. There are majorly two methodological parts in our face identification system, including PCA (principal component analysis) facial feature extraction and adaptive probabilistic model (APM). The structure of our implemented APM with a weighted combination of simple probabilistic functions constructs the likelihood functions by the probabilistic constraint in the similarity measures. In addition, our proposed method can online add a new client and update the information of registered clients due to the constructed APM. The experimental results eventually show the superior performance of our proposed system for both offline and real-time online testing.</p>http://asp.eurasipjournals.com/content/2010/983581
collection DOAJ
language English
format Article
sources DOAJ
author Shou Yu-Wen
Lin Chin-Teng
Siana Linda
Yang Chien-Ting
spellingShingle Shou Yu-Wen
Lin Chin-Teng
Siana Linda
Yang Chien-Ting
Multiclient Identification System Using Adaptive Probabilistic Model
EURASIP Journal on Advances in Signal Processing
author_facet Shou Yu-Wen
Lin Chin-Teng
Siana Linda
Yang Chien-Ting
author_sort Shou Yu-Wen
title Multiclient Identification System Using Adaptive Probabilistic Model
title_short Multiclient Identification System Using Adaptive Probabilistic Model
title_full Multiclient Identification System Using Adaptive Probabilistic Model
title_fullStr Multiclient Identification System Using Adaptive Probabilistic Model
title_full_unstemmed Multiclient Identification System Using Adaptive Probabilistic Model
title_sort multiclient identification system using adaptive probabilistic model
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
1687-6180
publishDate 2010-01-01
description <p>Abstract</p> <p>This paper aims at integrating detection and identification of human faces in a more practical and real-time face recognition system. The proposed face detection system is based on the cascade Adaboost method to improve the precision and robustness toward unstable surrounding lightings. Our Adaboost method innovates to adjust the environmental lighting conditions by histogram lighting normalization and to accurately locate the face regions by a region-based-clustering process as well. We also address on the problem of multi-scale faces in this paper by using 12 different scales of searching windows and 5 different orientations for each client in pursuit of the multi-view independent face identification. There are majorly two methodological parts in our face identification system, including PCA (principal component analysis) facial feature extraction and adaptive probabilistic model (APM). The structure of our implemented APM with a weighted combination of simple probabilistic functions constructs the likelihood functions by the probabilistic constraint in the similarity measures. In addition, our proposed method can online add a new client and update the information of registered clients due to the constructed APM. The experimental results eventually show the superior performance of our proposed system for both offline and real-time online testing.</p>
url http://asp.eurasipjournals.com/content/2010/983581
work_keys_str_mv AT shouyuwen multiclientidentificationsystemusingadaptiveprobabilisticmodel
AT linchinteng multiclientidentificationsystemusingadaptiveprobabilisticmodel
AT sianalinda multiclientidentificationsystemusingadaptiveprobabilisticmodel
AT yangchienting multiclientidentificationsystemusingadaptiveprobabilisticmodel
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