LIVENESS PALMPRINT DETECTION AND HUMAN RECOGNITION USING LOCAL MICRO-STRUCTURE TETRA PATTERN

246 views

Authors

Abstract

This paper proposes an approach for touchless detection of live palmprint and human recognition/identification. The method was implemented on Raspeberry Pi 4. The input palm print images are acquired by camera, from that the palm print areas are detected and extracted. Then, the region of interest in the palm print images are fed to a live palm print detection that is based on the changes of average image intensity in the image series according to blood flow changes in a circulation. After the object has detected as a live palm print case, the images are then applied to the human recognition/identification using Local Micro-structure Tetra Pattern. The experiments The proposed approach was applied on our acquired database including 15 subjects. The accuracy was up to 89% for live palm print detection, and 91% for human recognition/identification.

References

[1]. L. Fei, G. Lu, W. Jia, S. Teng, and D. Zhang, “Feature extraction methods for palmprint recognition: A survey and evaluation,” IEEE Trans. Syst., Man, Cybern., Syst., Vol. 49, No. 2 (2018), pp. 1-18.

[2]. L. Leng, M. Li, L. Leng, and A. B. J. Teoh, “Conjugate 2DpalmHash code for secure palm-print-vein verification,” in Proc. of 6th Int. Congress on Image and Signal Processing (CISP), (2013), pp. 1705-1710.

[3]. L. Leng, J. Zhang, M. K. Khan, X. Chen, and K. Alghathbar, “Dynamic weighted discrimination power analysis: a novel approach for face and palmprint recognition in DCT domain,” Int. Journal of Physical Sciences, Vol. 5, No. 17 (2010), pp. 2543–2554.

[4]. A. Kumar, “Toward more accurate matching of contactless palmprint images under less constrained environments,” IEEE Trans. Inf. Forensic. Secur., Vol. 14, No. 1 (2019), pp. 34–47.

[5]. C. Zaghetto, M. Mendelson, A. Zaghetto, and F. d. B. Vidal, “Liveness detection on touchless fingerprint devices using texture descriptors and artificial neural networks,” in Proc. 2017 IEEE Int. Joint Conference on Biometrics (IJCB), (2017), pp. 406–412.

[6]. J. Y. Choi, Y. M. Ro, and K. N. Plataniotis, “Color local texture features for color face recognition,” IEEE Trans. Image Process., Vol. 21, No. 3 (2012), pp. 1366–1380.

[7]. DCastaneda, AEsparza, MGhamari, CSoltanpur, H. Nazeran “A review on wearable photoplethysmography sensors and their potential future applications in health care”, Int J Biosens Bioelectron., Vol. 4, No. 4 (2018), pp. 195–202.

[8]. M. Turk, A. Pentland, “Eigenfaces for recognition” Journal of Cognitive Neuroscience, Vol.3, No.1 (1991), pp. 71-86.

[9]. P.N. Belhumeur; J.P. Hespanha; D.J. Kriegman, “Eigenfaces vs. Fisherfaces: recognition using class specific linear projection”, IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 19, No.7 (1997), pp. 711-720.

[10]. T. Ahonen, A. Hadid, M. Pietikäinen, “Face Recognition with Local Binary Patterns”, Proc. of European Conference on Computer Vision., (2004), pp. 469-481.

[11]. A. W. Kong and D. Zhang, “Competitive coding scheme for palmprint verification,” Proc. of the 17th International Conference on Pattern Recognition, (2004).

[12]. S. A. Maadeed, X. Jiang, I. Rida, A. Bouridane, “Palmprint identification using sparse and dense hybrid representation,”. Multimedia Tools and Applications, Vol.78, (2019), pp 5665–5679.

[13]. G. Li and J. Kim, “Palmprint recognition with Local Micro-structure Tetra Pattern,” Pattern Recognit., Vol. 61, (2017), pp. 29–46.

[14]. L. Fei, G. Lu, W. Jia, S. Teng, D. Zhang, “Feature Extraction Methods for Palmprint Recognition: A Survey and Evaluation,” IEEE Trans. on Systems, Man, and Cybernetics: Systems, Vol. 49, No. 2 (2019), pp. 346- 363..

Published

15-06-2021

How to Cite

Phạm , V. T. “LIVENESS PALMPRINT DETECTION AND HUMAN RECOGNITION USING LOCAL MICRO-STRUCTURE TETRA PATTERN”. Journal of Military Science and Technology, no. 73, June 2021, pp. 29-39, https://en.jmst.info/index.php/jmst/article/view/17.

Issue

Section

Research Articles