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Published in: International Journal of Machine Learning and Cybernetics 11/2020

10-06-2020 | Original Article

Category-preserving binary feature learning and binary codebook learning for finger vein recognition

Authors: Haiying Liu, Gongping Yang, Yilong Yin

Published in: International Journal of Machine Learning and Cybernetics | Issue 11/2020

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Abstract

Local binary feature learning has attracted a lot of researches in image recognition due to its vital effectiveness. Generally, in the traditional local feature learning methods, a projection is learned to map the patches of image into binary features and then a codebook is generated by clustering the binary features with K-means clustering. However, these local feature learning methods, such as compact binary face descriptor and discriminative binary descriptor, ignore the category specific distributions of the original features during the feature learning process and use the real-valued clustering approach to generate the codebook, the discriminant of feature is degraded and the merits of binary feature are lost. To tack these problems, in this paper, we propose a novel category-preserving binary feature learning and binary codebook leaning (CPBFL-BCL) method for finger vein recognition. In CPBFL-BCL, the discrimination of learned binary features is generated by criteria of fisher discriminant analysis and category manifold preserving regularity during the feature learning process, and a novel binary clustering method based on K-means clustering is designed to generate binary codebook. Experimental results on recognition and retrieval tasks using two public finger vein databases are presented and demonstrate the effectiveness and efficiency of the proposed method over the state-of-the-art finger vein methods and a finger vein retrieval method.

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Literature
1.
go back to reference Michael G, Connie T, Teoh A (2011) A contactless biometric system using palm print and palm vein features. J Vis Commun Image Represent 23(7):155–178 Michael G, Connie T, Teoh A (2011) A contactless biometric system using palm print and palm vein features. J Vis Commun Image Represent 23(7):155–178
2.
go back to reference Lu J, Erin L, Zhou J (2017) Simultaneous local binary feature learning and encoding for homogeneous and heterogeneous face recognition. IEEE Trans Pattern Anal Mach 40(8):1979–1993 Lu J, Erin L, Zhou J (2017) Simultaneous local binary feature learning and encoding for homogeneous and heterogeneous face recognition. IEEE Trans Pattern Anal Mach 40(8):1979–1993
3.
go back to reference Lee EC, Jung H, Kim D (2011) New finger biometric method using near infrared imaging. Sensors 11(3):2319–2333 Lee EC, Jung H, Kim D (2011) New finger biometric method using near infrared imaging. Sensors 11(3):2319–2333
4.
go back to reference Yang J, Zhang B, Shi Y (2012) Scattering removal for finger vein image restoration. Sensors 12(3):3627–3640 Yang J, Zhang B, Shi Y (2012) Scattering removal for finger vein image restoration. Sensors 12(3):3627–3640
5.
go back to reference Shin K, Park Y, Nguyen D, Park K (2014) Finger vein image enhancement using a fuzzy-based fusion method with gabor and retinex filtering. Sensors 14(2):3095–3129 Shin K, Park Y, Nguyen D, Park K (2014) Finger vein image enhancement using a fuzzy-based fusion method with gabor and retinex filtering. Sensors 14(2):3095–3129
6.
go back to reference Yang L, Yang G, Yin Y, Xiao R (2013) Sliding window-based region of interest extraction for finger vein images. Sensors 13:3799–3815 Yang L, Yang G, Yin Y, Xiao R (2013) Sliding window-based region of interest extraction for finger vein images. Sensors 13:3799–3815
7.
go back to reference Yang G, Xi X, Yin Y (2011) Finger vein recognition based on a personalized best bit map. Sensors 11:11357–11371 Yang G, Xi X, Yin Y (2011) Finger vein recognition based on a personalized best bit map. Sensors 11:11357–11371
8.
go back to reference Liu F, Yin Y, Yang G, Dong L, Xi X (2014) Finger vein recognition with superpixel-based features. In: 2014 IEEE international joint conference on biometrics (IJCB). IEEE, pp 1–8 Liu F, Yin Y, Yang G, Dong L, Xi X (2014) Finger vein recognition with superpixel-based features. In: 2014 IEEE international joint conference on biometrics (IJCB). IEEE, pp 1–8
9.
go back to reference Yang L, Yang G, Yin Y, Xi X (2018) Finger vein recognition with anatomy structure analysis. IEEE Trans Circuits Syst Video Techn 28(8):1892–1905 Yang L, Yang G, Yin Y, Xi X (2018) Finger vein recognition with anatomy structure analysis. IEEE Trans Circuits Syst Video Techn 28(8):1892–1905
10.
go back to reference Yang L, Yang G, Xi X, Su K, Chen Q, Yin Y (2018) Finger vein code: from indexing to matching. IEEE Trans Inf Forensics Secur 14(5):1210–1223 Yang L, Yang G, Xi X, Su K, Chen Q, Yin Y (2018) Finger vein code: from indexing to matching. IEEE Trans Inf Forensics Secur 14(5):1210–1223
11.
go back to reference Dong L, Yang G, Yin Y, Xi X, Yang L, Liu F (2015) Finger vein verification with vein textons. Int J Pattern Recognit Artif Intell 29(4):1556003 Dong L, Yang G, Yin Y, Xi X, Yang L, Liu F (2015) Finger vein verification with vein textons. Int J Pattern Recognit Artif Intell 29(4):1556003
12.
go back to reference Liu H, Yang L, Yang G, Yin Y (2018) Discriminative binary descriptor for finger vein recognition. IEEE Access 6:5795–5804 Liu H, Yang L, Yang G, Yin Y (2018) Discriminative binary descriptor for finger vein recognition. IEEE Access 6:5795–5804
13.
go back to reference Rosdi BA, Shing CW, Suandi SA (2011) Finger vein recognition using local line binary pattern. Sensors 11(12):11357–11371 Rosdi BA, Shing CW, Suandi SA (2011) Finger vein recognition using local line binary pattern. Sensors 11(12):11357–11371
14.
go back to reference Lu Y, Xie SJ, Yoon S, Park DS (2013) Finger vein identification using polydirectional local line binary pattern. In: ICT convergence (ICTC). IEEE, pp 61–65 Lu Y, Xie SJ, Yoon S, Park DS (2013) Finger vein identification using polydirectional local line binary pattern. In: ICT convergence (ICTC). IEEE, pp 61–65
15.
go back to reference Faudzi SAAM, Yahya N (2014) Evaluation of LBP-based face recognition techniques. In: 2014 5th International conference on intelligent and advanced systems (ICIAS). IEEE, pp 1–6 Faudzi SAAM, Yahya N (2014) Evaluation of LBP-based face recognition techniques. In: 2014 5th International conference on intelligent and advanced systems (ICIAS). IEEE, pp 1–6
16.
go back to reference Lee HC, Nagasaka A, Miyatake T (2010) Finger vein recognition using weighted local binary pattern code based on a support vector machine. J Zhejiang Univ Sci C 11:514–524 Lee HC, Nagasaka A, Miyatake T (2010) Finger vein recognition using weighted local binary pattern code based on a support vector machine. J Zhejiang Univ Sci C 11:514–524
17.
go back to reference Zhao G, Matti P (2007) Dynamic texture recognition using local binary patterns with an application to facial expressions. IEEE Trans Pattern Anal Mach 29(6):915–928 Zhao G, Matti P (2007) Dynamic texture recognition using local binary patterns with an application to facial expressions. IEEE Trans Pattern Anal Mach 29(6):915–928
18.
go back to reference Liu L, Fieguth P, Guo Y, Wang X, Pietikainen M (2017) Local binary features for texture classification: taxonomy and experimental study. Pattern Recognit 62:135–160 Liu L, Fieguth P, Guo Y, Wang X, Pietikainen M (2017) Local binary features for texture classification: taxonomy and experimental study. Pattern Recognit 62:135–160
19.
go back to reference Lu J, Liong VE, Zhou X, Jie Z (2015) Learning compact binary face descriptor for face recognition. IEEE Trans Pattern Anal Mach 37(10):2041–2056 Lu J, Liong VE, Zhou X, Jie Z (2015) Learning compact binary face descriptor for face recognition. IEEE Trans Pattern Anal Mach 37(10):2041–2056
20.
go back to reference Deng W, Hu J, Guo J (2019) Compressive binary patterns: designing a robust binary face descriptor with random-field eigenfilters. IEEE Trans Pattern Anal Mach 41(3):758–767 Deng W, Hu J, Guo J (2019) Compressive binary patterns: designing a robust binary face descriptor with random-field eigenfilters. IEEE Trans Pattern Anal Mach 41(3):758–767
21.
go back to reference Xi X, Yang L, Yin Y (2017) Learning discriminative binary codes for finger vein recognition. Pattern Recogn 66:26–33 Xi X, Yang L, Yin Y (2017) Learning discriminative binary codes for finger vein recognition. Pattern Recogn 66:26–33
22.
go back to reference Dong F, Nie X, Liu X, Geng L, Wang Q (2018) Cross-modal hashing based on category structure preserving. J Vis Commun Image Represent 57:28–33 Dong F, Nie X, Liu X, Geng L, Wang Q (2018) Cross-modal hashing based on category structure preserving. J Vis Commun Image Represent 57:28–33
23.
go back to reference Fisher RA (1936) The use of multiple measurements in taxonomic problems. Ann Hum Genet 7(2):179–188 Fisher RA (1936) The use of multiple measurements in taxonomic problems. Ann Hum Genet 7(2):179–188
24.
go back to reference Irie G, Li Z, Wu X, Chang S (2014) Locally linear hashing for extracting non-linear manifolds. In: 2014 IEEE conference on computer vision and pattern recognition (CVPR), pp 2115–2122 Irie G, Li Z, Wu X, Chang S (2014) Locally linear hashing for extracting non-linear manifolds. In: 2014 IEEE conference on computer vision and pattern recognition (CVPR), pp 2115–2122
25.
go back to reference Ji R, Liu H, Cao L, Liu D, Wu Y, Huang F (2017) Toward optimal manifold hashing via discrete locally linear embedding. IEEE Trans Image Process 26:5411–5420MathSciNetMATH Ji R, Liu H, Cao L, Liu D, Wu Y, Huang F (2017) Toward optimal manifold hashing via discrete locally linear embedding. IEEE Trans Image Process 26:5411–5420MathSciNetMATH
26.
go back to reference Liu H, Yang G, Yang L, Su K, Yin Y (2019) Anchor-based manifold binary pattern for finger vein recognition. Sci China Inf Sci 62(2019):052104 Liu H, Yang G, Yang L, Su K, Yin Y (2019) Anchor-based manifold binary pattern for finger vein recognition. Sci China Inf Sci 62(2019):052104
27.
go back to reference Miura N, Nagasaka A, Miyatake T (2004) Feature extraction of finger vein pattern based on repeated line tracking and its application to personal identification. Mach Vis Appl 15(4):194–203 Miura N, Nagasaka A, Miyatake T (2004) Feature extraction of finger vein pattern based on repeated line tracking and its application to personal identification. Mach Vis Appl 15(4):194–203
28.
go back to reference Miura N, Nagasaka A, Miyatake T (2007) Extraction of finger vein patterns using maximum curvature points in image profiles. IEICE Trans Inf Syst 90(8):1185–1194 Miura N, Nagasaka A, Miyatake T (2007) Extraction of finger vein patterns using maximum curvature points in image profiles. IEICE Trans Inf Syst 90(8):1185–1194
29.
go back to reference Song W, Kim T, Kim HC, Choi JH, Kong HJ (2011) A finger vein verification system using mean curvature. Pattern Recognit Lett 32(11):1541–1547 Song W, Kim T, Kim HC, Choi JH, Kong HJ (2011) A finger vein verification system using mean curvature. Pattern Recognit Lett 32(11):1541–1547
30.
go back to reference Kumar A, Zhou Y (2012) Human identification using finger images. IEEE Trans Image Process 21(4):2228–2244MathSciNetMATH Kumar A, Zhou Y (2012) Human identification using finger images. IEEE Trans Image Process 21(4):2228–2244MathSciNetMATH
31.
go back to reference Yu C, Qin H, Zhang L, Cui Y (2009) Finger vein image recognition combining modified Hausdorff distance with minutiae feature matching. Interdiscip Sci Comput Life Sci 2(4):280–289 Yu C, Qin H, Zhang L, Cui Y (2009) Finger vein image recognition combining modified Hausdorff distance with minutiae feature matching. Interdiscip Sci Comput Life Sci 2(4):280–289
32.
go back to reference Matsuda Y, Miura N, Nagasaka A, Kiyomizu H, Miyatake T (2016) Finger-vein authentication based on deformation-tolerant feature-point matching. Mach Vis Appl 27(2):237–250 Matsuda Y, Miura N, Nagasaka A, Kiyomizu H, Miyatake T (2016) Finger-vein authentication based on deformation-tolerant feature-point matching. Mach Vis Appl 27(2):237–250
33.
go back to reference Wu J, Liu C (2011) Finger vein pattern identification using principal component analysis and the neural network technique. Expert Syst Appl 145:75–89 Wu J, Liu C (2011) Finger vein pattern identification using principal component analysis and the neural network technique. Expert Syst Appl 145:75–89
34.
go back to reference Yang G, Xi X, Yin Y (2011) Finger vein recognition based on (2D)\(^2\)PCA and metric learning. BioMed Res Int 2012(3):324249 Yang G, Xi X, Yin Y (2011) Finger vein recognition based on (2D)\(^2\)PCA and metric learning. BioMed Res Int 2012(3):324249
35.
go back to reference Guan F, Wang K, Liu J, Wu Q (2011) Bi-direction weighted (2D)\(^2\)PCA with eigenvalue normalization one forefinger vein recognition. Pattern Recogn Art Intell 24:417–424 Guan F, Wang K, Liu J, Wu Q (2011) Bi-direction weighted (2D)\(^2\)PCA with eigenvalue normalization one forefinger vein recognition. Pattern Recogn Art Intell 24:417–424
36.
go back to reference Wu J, Liu C (2011) Finger vein pattern identification using svm and neural network technique. Expert Syst Appl 38(11):14284–14289 Wu J, Liu C (2011) Finger vein pattern identification using svm and neural network technique. Expert Syst Appl 38(11):14284–14289
37.
go back to reference Zhou L, Yang G, Yin Y, Yang L, Wang K (2016) Finger vein recognition based on stable and discriminative superpixels. Int J Pattern Recognit Artif Intell 30(6):1650015 Zhou L, Yang G, Yin Y, Yang L, Wang K (2016) Finger vein recognition based on stable and discriminative superpixels. Int J Pattern Recognit Artif Intell 30(6):1650015
38.
go back to reference Duan Y, Lu J, Feng J, Zhou J (2017) Learning rotation-invariant local binary descriptor. IEEE Trans Image Process 26(8):3636–3651MathSciNetMATH Duan Y, Lu J, Feng J, Zhou J (2017) Learning rotation-invariant local binary descriptor. IEEE Trans Image Process 26(8):3636–3651MathSciNetMATH
39.
go back to reference Duan Y, Lu J, Feng J (2018) Context-aware local binary feature learning for face recognition. IEEE Trans Pattern Anal Mach 40(5):1139–1153 Duan Y, Lu J, Feng J (2018) Context-aware local binary feature learning for face recognition. IEEE Trans Pattern Anal Mach 40(5):1139–1153
40.
go back to reference Gong Y, Pawlowski M, Yang F, Brandy L, Bourdev L, Fergus R (2015) Web scale photo hash clustering on a single machine. In: IEEE conference on computer vision and pattern recognition (CVPR), pp 19–27 Gong Y, Pawlowski M, Yang F, Brandy L, Bourdev L, Fergus R (2015) Web scale photo hash clustering on a single machine. In: IEEE conference on computer vision and pattern recognition (CVPR), pp 19–27
41.
go back to reference Shen X, Liu W, Tsang I, Shen F, Sun Q (2017) Compressed K-means approach for large-scale clustering. In: Proceedings of the thirty-first AAAI conference on artificial intelligence (AAAI), pp 2527–2533 Shen X, Liu W, Tsang I, Shen F, Sun Q (2017) Compressed K-means approach for large-scale clustering. In: Proceedings of the thirty-first AAAI conference on artificial intelligence (AAAI), pp 2527–2533
42.
go back to reference Zhang Z, Liu L, Shen F, Shen H, Shao L (2019) Binary multi-view clustering. IEEE Trans Pattern Anal Mach 41(7):1774–1782 Zhang Z, Liu L, Shen F, Shen H, Shao L (2019) Binary multi-view clustering. IEEE Trans Pattern Anal Mach 41(7):1774–1782
43.
go back to reference Zhang Z, Liu L, Qin J, Zhu F, Shen H (2018) Highly-economized multi-view binary compression for scalable image clustering. In: European conference on computer vision (ECCV), pp 717–732 Zhang Z, Liu L, Qin J, Zhu F, Shen H (2018) Highly-economized multi-view binary compression for scalable image clustering. In: European conference on computer vision (ECCV), pp 717–732
44.
go back to reference Lai Z, Chen Y, Wu J, Wai W, Shen F (2018) Jointly sparse hashing for image retrieval. IEEE Trans Image Process 27(12):6147–6158MathSciNet Lai Z, Chen Y, Wu J, Wai W, Shen F (2018) Jointly sparse hashing for image retrieval. IEEE Trans Image Process 27(12):6147–6158MathSciNet
45.
go back to reference Lei Z, Pietikainen M, Li SZ (2014) Learning discriminant face descriptor. IEEE Trans Pattern Anal Mach 36(2):289–302 Lei Z, Pietikainen M, Li SZ (2014) Learning discriminant face descriptor. IEEE Trans Pattern Anal Mach 36(2):289–302
46.
go back to reference Deng W, Hu J, Guo J (2017) Face recognition via collaborative representation: its discriminant nature and superposed representation. IEEE Trans Pattern Anal Mach 40(10):2513–2521 Deng W, Hu J, Guo J (2017) Face recognition via collaborative representation: its discriminant nature and superposed representation. IEEE Trans Pattern Anal Mach 40(10):2513–2521
47.
go back to reference Kan M, Shan S, Zhang H, Lao S, Chen X (2016) Multi-view discriminant analysis. IEEE Trans Pattern Anal Mach 38(1):188–192 Kan M, Shan S, Zhang H, Lao S, Chen X (2016) Multi-view discriminant analysis. IEEE Trans Pattern Anal Mach 38(1):188–192
48.
go back to reference Guo M, Yang S, Nie F, Li X (2018) Locality-based discriminant feature selection with trace ratio. In: 25th IEEE international conference on image processing (ICIP ), pp 3337–3377 Guo M, Yang S, Nie F, Li X (2018) Locality-based discriminant feature selection with trace ratio. In: 25th IEEE international conference on image processing (ICIP ), pp 3337–3377
49.
go back to reference Zhang C, Liu Y, Hu Q, Liu X, Zhu P (2018) FISH-MML: fisher-HSIC multi-view metric learning. In: Proceedings of the twenty-seventh international joint conference on artificial intelligence (IJCAI), pp 3054–3060 Zhang C, Liu Y, Hu Q, Liu X, Zhu P (2018) FISH-MML: fisher-HSIC multi-view metric learning. In: Proceedings of the twenty-seventh international joint conference on artificial intelligence (IJCAI), pp 3054–3060
50.
go back to reference Roweis S (2000) Nonlinear dimensionality reduction by locally linear embedding. Science 290(5500):2323–2326 Roweis S (2000) Nonlinear dimensionality reduction by locally linear embedding. Science 290(5500):2323–2326
51.
go back to reference Cai D, Chen X (2017) Unsupervised large graph embedding. In: Proceeding of the Thirty-First AAAI conference on artificial intelligence, pp 2422–2428 Cai D, Chen X (2017) Unsupervised large graph embedding. In: Proceeding of the Thirty-First AAAI conference on artificial intelligence, pp 2422–2428
52.
go back to reference Wen Z, Yin W (2013) A feasible method for optimization with orthogonality constraints. Math Program 142(1):397–434MathSciNetMATH Wen Z, Yin W (2013) A feasible method for optimization with orthogonality constraints. Math Program 142(1):397–434MathSciNetMATH
53.
go back to reference Ding C, He X, Simon H (2005) On the equivalence of nonnegative matrix factorization and spectral clustering. In: Industrial conference on data mining (ICDM), pp 606–610 Ding C, He X, Simon H (2005) On the equivalence of nonnegative matrix factorization and spectral clustering. In: Industrial conference on data mining (ICDM), pp 606–610
54.
go back to reference Yin Y, Liu L, Sun X (2011) Sdumla-hmt: a multimodal biometric database. In: Chinese conference on biometric recognition (CCBR), pp 260–268 Yin Y, Liu L, Sun X (2011) Sdumla-hmt: a multimodal biometric database. In: Chinese conference on biometric recognition (CCBR), pp 260–268
55.
go back to reference Meng X, Yang G, Yin Y, Xiao R (2012) Finger vein recognition based on local directional code. Sensors 12:14937–14952 Meng X, Yang G, Yin Y, Xiao R (2012) Finger vein recognition based on local directional code. Sensors 12:14937–14952
Metadata
Title
Category-preserving binary feature learning and binary codebook learning for finger vein recognition
Authors
Haiying Liu
Gongping Yang
Yilong Yin
Publication date
10-06-2020
Publisher
Springer Berlin Heidelberg
Published in
International Journal of Machine Learning and Cybernetics / Issue 11/2020
Print ISSN: 1868-8071
Electronic ISSN: 1868-808X
DOI
https://doi.org/10.1007/s13042-020-01143-1

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