Single-Sample Face Recognition Based on LPP Feature Transfer

Due to its wide applications in practice, face recognition has been an active research topic. With the availability of adequate training samples, many machine learning methods could yield high face recognition accuracy. However, under the circumstance of inadequate training samples, especially the e...

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Main Authors: Jie Pan, Xue-Song Wang, Yu-Hu Cheng
Format: Article
Language:English
Published: IEEE 2016-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7480758/
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spelling doaj-79908522499f44beb1ae3f6c72b1f29e2021-03-29T19:42:16ZengIEEEIEEE Access2169-35362016-01-0142873288410.1109/ACCESS.2016.25743667480758Single-Sample Face Recognition Based on LPP Feature TransferJie Pan0Xue-Song Wang1https://orcid.org/0000-0002-5327-1088Yu-Hu Cheng2School of Information and Electrical Engineering, China University of Mining and Technology, Xuzhou, ChinaSchool of Information and Electrical Engineering, China University of Mining and Technology, Xuzhou, ChinaSchool of Information and Electrical Engineering, China University of Mining and Technology, Xuzhou, ChinaDue to its wide applications in practice, face recognition has been an active research topic. With the availability of adequate training samples, many machine learning methods could yield high face recognition accuracy. However, under the circumstance of inadequate training samples, especially the extreme case of having only a single training sample, face recognition becomes challenging. How to deal with conflicting concerns of the small sample size and high dimensionality in one-sample face recognition is critical for its achievable recognition accuracy and feasibility in practice. Being different from the conventional methods for global face recognition based on generalization ability promotion and local face recognition depending on image segmentation, a single-sample face recognition algorithm based on locality preserving projection (LPP) feature transfer is proposed here. First, transfer sources are screened to obtain the selective sample source using the whitened cosine similarity metric. Second, we project the vectors of source faces and target faces into feature subspace by LPP, respectively, and calculate the feature transfer matrix to approximate the mapping relationship on source faces and target faces in subspace. Then, the feature transfer matrix is used on training samples to transfer the original macro characteristics to target macro characteristics. Finally, the nearest neighbor classifier is used for face recognition. Our results based on popular databases FERET, ORL, and Yale demonstrate the superiority of the proposed LPP feature transfer-based one-sample face recognition algorithm when compared with popular single-sample face recognition algorithms, such as (PC)<sup>2</sup>A and Block FLDA.https://ieeexplore.ieee.org/document/7480758/Feature extractiontransfer learningone-sampleface recognitionlocality preserving projection
collection DOAJ
language English
format Article
sources DOAJ
author Jie Pan
Xue-Song Wang
Yu-Hu Cheng
spellingShingle Jie Pan
Xue-Song Wang
Yu-Hu Cheng
Single-Sample Face Recognition Based on LPP Feature Transfer
IEEE Access
Feature extraction
transfer learning
one-sample
face recognition
locality preserving projection
author_facet Jie Pan
Xue-Song Wang
Yu-Hu Cheng
author_sort Jie Pan
title Single-Sample Face Recognition Based on LPP Feature Transfer
title_short Single-Sample Face Recognition Based on LPP Feature Transfer
title_full Single-Sample Face Recognition Based on LPP Feature Transfer
title_fullStr Single-Sample Face Recognition Based on LPP Feature Transfer
title_full_unstemmed Single-Sample Face Recognition Based on LPP Feature Transfer
title_sort single-sample face recognition based on lpp feature transfer
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2016-01-01
description Due to its wide applications in practice, face recognition has been an active research topic. With the availability of adequate training samples, many machine learning methods could yield high face recognition accuracy. However, under the circumstance of inadequate training samples, especially the extreme case of having only a single training sample, face recognition becomes challenging. How to deal with conflicting concerns of the small sample size and high dimensionality in one-sample face recognition is critical for its achievable recognition accuracy and feasibility in practice. Being different from the conventional methods for global face recognition based on generalization ability promotion and local face recognition depending on image segmentation, a single-sample face recognition algorithm based on locality preserving projection (LPP) feature transfer is proposed here. First, transfer sources are screened to obtain the selective sample source using the whitened cosine similarity metric. Second, we project the vectors of source faces and target faces into feature subspace by LPP, respectively, and calculate the feature transfer matrix to approximate the mapping relationship on source faces and target faces in subspace. Then, the feature transfer matrix is used on training samples to transfer the original macro characteristics to target macro characteristics. Finally, the nearest neighbor classifier is used for face recognition. Our results based on popular databases FERET, ORL, and Yale demonstrate the superiority of the proposed LPP feature transfer-based one-sample face recognition algorithm when compared with popular single-sample face recognition algorithms, such as (PC)<sup>2</sup>A and Block FLDA.
topic Feature extraction
transfer learning
one-sample
face recognition
locality preserving projection
url https://ieeexplore.ieee.org/document/7480758/
work_keys_str_mv AT jiepan singlesamplefacerecognitionbasedonlppfeaturetransfer
AT xuesongwang singlesamplefacerecognitionbasedonlppfeaturetransfer
AT yuhucheng singlesamplefacerecognitionbasedonlppfeaturetransfer
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