Computer Science ›› 2018, Vol. 45 ›› Issue (6A): 206-209.

• Pattern Recognition & Image Processing • Previous Articles     Next Articles

Algorithm for Human Dorsal Vein FeatureIdentification

YAN Jiao-jiao, CHONG Lan-xiang,LI Ting   

  1. College of Information Science and Technology,Northwest University,Xi’an 710127,China
  • Online:2018-06-20 Published:2018-08-03

Abstract: For the current hand vein image recognition using the extraction structure features such as refinement and skeleton operations,it’s easy to cause the loss of vein structure details and misjudgment of feature points,this paper proposed a hand vein feature recognition algorithm based on gradient histogram gradient (HOG).Adopting general biometric identification process,this algorithm extracts the HOG texture feature of the low-frequency sub-band graph by the directly decomposing two-level wavelet packet after the hand dorsal vein image is preprocessed by image grey normalization pretreatment and filtering enhancement.Then,the personal identity is recognized by using K neighbor classifier.This algorithm was verified finally by using self-established dorsal vein image database.The experimental results show that the proposed algorithm is effective and its correct recognition rate is 95%,and its application prospect is broad.

Key words: K neighbor classifier, Hand vein, HOG feature, Image database, Wavelet packet decomposition

CLC Number: 

  • TP391
[6]ZHANG Q,ZHANG X.Research of Key Algorithm in the Technology of Fingerprint Identification [M].IEEE,2010:282-284.
[7]JAFRI R,ARABNIA H R.A Survey of Face Recognition Techniques[J].Journal of Information Processing Systems,2010,5(2):41-68.
[9]AKRAM M,AWAN H,KHAN A.Dorsal hand veins based person identification[C]∥IEEE International Conference on Image Processing Theory,Tools and Applications.IEEE,2014:1-6.
[10]HUANG D,ZHU X,WANG Y,et al.Dorsal hand vein recognition via hierarchical combination of texture and shape clues [J].Neurocomputing,2016,214(C):815-828.
[12]DING Y,ZHANG D,WANG K.A study of hand vein recognition method[C]∥Proceedings of the IEEE International Confe-rence on Mechatronics & Automation.NiagaraFalls,IEEE,2005:2106-2110.
[14]WANG Y,LIAO W.Hand vein recognition based on feature coding[C]∥Proceedings of the 7th Chinese Conference on Biometric Recognition,LNCS 7701.Piscataway:IEEE Press,2012:165-175.
[15]ZHU X,HUANG D,WANG Y.Hand dorsal vein recognition based on shape representation of the venous network[C]∥14th Pacific-Rim Conference on Multimedia,PCM 2013.LNCS,2013,8294:158-169.
[16]WU K,LEE J,LO T,et al.A secure palm vein recognition system[J].Journal of Systems and Software,2013,86(11):2870-2876.
[19]HU Y,WANG Z,YANG X,et al.Hand vein recognition based on the connection lines of reference point and feature point[J].Infrared Physics and Technology,2014,62:110-114.
[21]岂兴明,周建兴,矫津毅.LabVIEW 8.2中文版入门与典型实例[M].北京:人民邮电出版社,2010.
[22]TANG Y,HUANG D,WANG Y.Hand-dorsa vein recognition based on multi-level keypoint detection and local feature matching[C]∥21st International Conference on Pattern Recognition(ICPR 2012).2012:2837-2840.
[24]YEN G,LIN K.Wavelet packet feature extraction forvibration monitoring[J].IEEE Transactions on Industrial Electronics,2002,47(3):650-667.
[1] LIU Ying, ZHANG Shuai, GE Yu-xiang, WANG Fu-ping, LI Da-xiang. Survey of Tire Pattern Image Retrieval Techniques [J]. Computer Science, 2018, 45(12): 52-60.
[2] TIAN Xian-xian,BAO Hong and XU Cheng. Improved HOG Algorithm of Pedestrian Detection [J]. Computer Science, 2014, 41(9): 320-324.
[3] ZHOU Xuan-ru,YUAN Jia-zheng,LIU Hong-zhe and YANG Rui. Research on Algorithm for Real-time Recognition of Traffic Light Based on HOG Features [J]. Computer Science, 2014, 41(7): 313-317.
[4] LU Xing-jia,CHEN Zhi-rong,YIN Tian-he and YANG Fan. Research of Pedestrian Tracking Based on HOG Feature and Haar Feature [J]. Computer Science, 2013, 40(Z6): 199-203.
[5] . Construction of Multi-layer Semantic Image Database Based on Mpeg-7 [J]. Computer Science, 2012, 39(Z6): 532-535.
[6] . [J]. Computer Science, 2006, 33(3): 212-214.
Full text



No Suggested Reading articles found!