广东工业大学学报 ›› 2022, Vol. 39 ›› Issue (03): 55-62.doi: 10.12052/gdutxb.210023
丘展春, 费伦科, 滕少华, 张巍
Qiu Zhan-chun, Fei Lun-ke, Teng Shao-hua, Zhang Wei
摘要: 掌纹识别作为一种新兴的生物特征识别技术,具有识别率高、特征稳定等优点。传统的基于手工提取特征的掌纹识别算法使用先验知识提取掌纹主线和细节点,存在可扩展性低、提取图像特征困难、无法挖掘数据的隐藏信息等问题。为了解决这些问题,本文提出了一种基于学习的掌纹识别算法。首先提取掌纹图像的像素值差向量(Pixel Different Vector,PDV)特征。然后,通过余弦相似度保持模型,同时学习PDV特征的二进制表示及其映射函数,以减少PDV特征的信息冗余。最后,为了处理掌纹位置偏移和光照变化等噪音,将学习得到的二进制特征编码成直方图描述子。在3个广泛使用的掌纹数据库上的实验结果表明,所提出的算法能更好地挖掘掌纹图像的内在特征,有效地提高掌纹识别精度。
中图分类号:
[1] ANIL K, KARTHIK N, ARUN R. 50 years of biometric research: accomplishments, challenges, and opportunities [J]. Pattern Recognition Letters, 2016, 79(1): 80-105. [2] 钟德星, 朱劲松, 杜学峰. 掌纹识别综述[J]. 模式识别与人工智能, 2019, 32(5): 436-445. ZHONG D X, ZHU J S, DU X F. Progress of palmprint recognition: a review [J]. Pattern Recognition and Artificial Intelligence, 2019, 32(5): 436-445. [3] DING Y H, ZHUANG D, WANG K. A study of hand vein recognition method[C]//IEEE International Conference Mechatronics and Automation. Niagara Falls: IEEE, 2005: 2106-2110. [4] KUMAR A, WONG D C M, SHEN H C, et al. Personal verification using palmprint and hand geometry biometric[C]// International Conference on Audio and Video Based Biometric Person Authentication. Berlin: Springer, 2003: 668-678. [5] ZHOU M, ZHANG X, YIN F, et al. Discriminative quadratic feature learning for handwritten Chinese character recognition [J]. Pattern Recognition, 2016, 49(1): 7-18. [6] SARKAR S, PHILLIPS P J, LIU Z, et al. The humanoid gait challenge problem: data sets, performance, and analysis [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2005, 27(2): 162-177. [7] SHU W, ZHANG D. Automated personal identification by palmprint [J]. Optical Engineering, 1998, 37(8): 2359-2362. [8] ZHANG D, SHU W. Two novel characteristics in palmprint verification: datum point invariance and line feature matching [J]. Pattern Recognition, 1999, 32(4): 691-702. [9] ZHANG D, KONG W K, YOU J, et al. Online palmprint identification [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2003, 25(9): 1041-1050. [10] DAI J, ZHOU J, MEMBER S. Multifeature-based high-resolution palmprint recognition [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2011, 33(5): 945-957. [11] FEI L, TENG S, WU J. Enhanced minutiae extraction for high-resolution [J]. International Journal of Image and Graphics, 2017, 17(4): 1-15. [12] BOUNNECHE M, BOUBCHIR L, BOURIDANE A, et al. Multi-spectral palmprint recognition based on oriented multiscale log-gabor filters [J]. Neurocomputing, 2016, 205(9): 274-286. [13] GUO Z, ZHANG D, ZHANG L, et al. Feature band selection for online multispectral palmprint recognition [J]. IEEE Transactions on Information Forensics and Security, 2012, 7(3): 1094-1099. [14] ZHANG D, GUO Z, LU G, et al. An online system of multispectral palmprint verification [J]. IEEE Transactions on Instrumentation and Measurement, 2010, 59(2): 480-490. [15] ZHANG D, LU G, LI W, et al. Palmprint recognition using 3-d information [J]. IEEE Transactions on Systems Man and Cybernetics-Part C, 2009, 39(5): 505-519. [16] ZHANG D, KANHANGAD V, LUO N, et al. Robust palmprint verification using 2D and 3D features [J]. Pattern Recognition, 2010, 43(1): 358-368. [17] 林森, 苑玮琦. 掌纹感兴趣区域定位与选择方法[J]. 计算机工程与应用, 2011, 47(14): 21-24. LIN S, YUAN W Q. Survey on orientation and selection methods for palmprint region of interest [J]. Computer Engineering and Applications, 2011, 47(14): 21-24. [18] HUANG D, JIA W, ZHANG D. Palmprint verification based on principal lines [J]. Pattern Recognition, 2008, 41(4): 1316-1328. [19] SUN Z, TAN T, WANG Y, et al. Ordinal palmprint representation for personal identification[C]//IEEE Computer Society Conference on Computer Vision and Pattern Recognition. San Diego: IEEE, 2005: 279-284. [20] KONG A W K, ZHANG D. Competitive coding scheme for palmprint verification[C] //Proceedings of 17th International Conference on Pattern Recognition. Cambridge: IEEE, 2004: 520-523. [21] XU Y, FEI L K, WEN J, et al. Discriminative and robust competitive code for palmprint recognition [J]. IEEE Transactions on Systems Man and Cybernetics Systems, 2018, 48(2): 232-241. [22] GUO Z H, ZHANG D, ZHANG L, et al. Palmprint verification using binary orientation co-occurrence vector [J]. Pattern Recognition Letter, 2009, 30(13): 1219-1227. [23] ZHENG Q, KUMAR A, PAN G. A 3D feature descriptor recovered from a single 2D palmprint image [J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2016, 38(6): 1272-1279. [24] FEI L, ZHANG B, ZHANG W, et al. Local apparent and latent direction extraction for palmprint recognition [J]. Information Sciences, 2019, 473: 59-72. [25] JIA W, HU R X, LEI Y K, et al. Histogram of oriented lines for palmprint recognition [J]. IEEE Transactions on Systems Man and Cybernetics:Systems, 2013, 44(3): 385-395. [26] ZHAO S P, ZHANG B. Learning complete and discriminative direction pattern for robust palmprint recognition [J]. IEEE Transactions on Image Processing, 2021, 30(6): 1001-1014. [27] FEI L K, ZHANG B, ZHANG L. Learning compact multifeature codes for palmprint recognition from a single training image per palm [J]. IEEE Transactions on Multimedia, 2020, 44(3): 385-395. [28] LU G M, ZHANG D, WANG K Q. Palmprint recognition using eigenpalms features [J]. Pattern Recognition Letters, 2003, 24(9): 1463-1467. [29] 裴昱, 温洁嫦. 基于独立分量分析的一种改进的掌纹识别算法[J]. 广东工业大学学报, 2010, 27(1): 51-54. PEI Y, WEN J C. An improved method of palmprint recognition based on independent component analysis [J]. Journal of Guangdong University of Technology, 2010, 27(1): 51-54. [30] HU D W, FENG G Y, ZHOU Z T. Two-dimensional locality preserving projections (2DLPP) with its application to palmprint recognition [J]. Pattern Recognition, 2007, 40(1): 339-342. [31] SVOBODA J, MASCI J, BRONSTEIN M M. Palmprint recognition via discriminative index learning[C] //International Conference on Pattern Recognition. Cancun: IEEE, 2017: 4232-4237. [32] ZHANG L, CHENG Z X, SHEN Y, et al. Palmprint and palmvein recognition based on DCNN and a new large-scale contactless palmvein dataset [J]. Symmetry, 2018, 10(4): 78-92. [33] LU J W, LIONG V E, ZHOU X Z, et al. Learning compact binary face descriptor for face recognition [J]. IEEE Transaction on Pattern Analysis Machine Intelligence, 2015, 37(10): 2041-2056. [34] SHEN F M, SHEN C H, LIU W, et al. Supervised discrete hashing[C] //IEEE Conference on Computer Vision and Pattern Recognition. Boston: IEEE, 2015: 37-45. [35] SIMONYAN K, ZISSERMAN A. Very deep convolutional networks for large-scale image recognition[EB/OL].(2015-04-10)[2019-12-11].https://arxiv.org/pdf/1409.1556.pdf [36] 贾梦琦. 非接触式掌纹识别算法研究[D]. 青岛: 青岛大学, 2017. [37] HUANG D, SHAN C F. Local binary patterns and its application to facial image analysis: a survey [J]. IEEE Transactions on Systems Man and Cybernetics-Part C, 2011, 41(6): 765-781. |
[1] | 杨孟军, 苏成悦, 陈静, 张洁鑫. 基于卷积神经网络的视觉闭环检测研究[J]. 广东工业大学学报, 2018, 35(05): 31-37. |
[2] | 戴知圣, 潘晴, 常桂林, 陈健刚. 基于机器视觉的贴片引脚焊接缺陷检测[J]. 广东工业大学学报, 2016, 33(03): 65-69. |
[3] | 邹丽娜,凌捷. 一种基于特征提取的二级文本分类方法[J]. 广东工业大学学报, 2012, 29(4): 65-68. |
[4] | 裴昱, 温洁嫦. 基于独立分量分析的一种改进的掌纹识别方法[J]. 广东工业大学学报, 2010, 27(1): 51-54. |
[5] | 张烈平; 张俞伟; 莫玮; . RBF神经网络在诱发脑电信号分类中的应用研究[J]. 广东工业大学学报, 2004, 21(4): 16-20. |
[6] | 周维忠; 赵海洋; 孙国基; 冯心海; . 基于自适应小波的光频数据分类[J]. 广东工业大学学报, 1999, 16(3): 52-56. |
|