| Literature DB >> 23202194 |
Xianjing Meng1, Gongping Yang, Yilong Yin, Rongyang Xiao.
Abstract
Finger vein patterns are considered as one of the most promising biometric authentication methods for its security and convenience. Most of the current available finger vein recognition methods utilize features from a segmented blood vessel network. As an improperly segmented network may degrade the recognition accuracy, binary pattern based methods are proposed, such as Local Binary Pattern (LBP), Local Derivative Pattern (LDP) and Local Line Binary Pattern (LLBP). However, the rich directional information hidden in the finger vein pattern has not been fully exploited by the existing local patterns. Inspired by the Webber Local Descriptor (WLD), this paper represents a new direction based local descriptor called Local Directional Code (LDC) and applies it to finger vein recognition. In LDC, the local gradient orientation information is coded as an octonary decimal number. Experimental results show that the proposed method using LDC achieves better performance than methods using LLBP.Entities:
Mesh:
Year: 2012 PMID: 23202194 PMCID: PMC3522947 DOI: 10.3390/s121114937
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Description of the calculation of the LDC descriptor.
The LDC feature extraction.
| 1. | Allocate 2D array |
| 2. | for |
| 3. | for |
| 4. | get |
| 5. | calculate |
| 6. | If |
| 7. | |
| 8. | else if |
| 9. | |
| 10. | else if |
| 11. | |
| 12. | else if |
| 13. | |
| 14. | end if; |
| 15. | calculate |
| 16. | end for; |
| 17. | end for; |
| 18. | Return |
Figure 2.Finger vein images processed by LDC. The first row shows the original finger vein images, the second row shows the LDC images, respectively.
Figure 3.Illustration of 45°-direction analysis. (a) 3-square neighbor. (b) Vertical filter of LDC in 45° rotation. (c) Horizontal filter of LDC in 45° rotation.
Figure 4.Flowchart of the finger vein recognition method. (a) Figure vein image after preprocessing; (b) Vision image for LDCs; (c) Matching results, here the black region implies the unmatched area, as Image 1 and Image 2 are from different classes, only 27 percent of the LDCs are matched.
Figure 5.Examples of preprocessing. (a) Original finger vein image; (b) ROI of (a); (c) Finger vein image after size normalization; (d) Finger vein image after gray normalization.
Figure 6.Matching score distribution of the LLBP-based method.
Figure 7.Matching score distribution of the LDC -00-based finger vein recognition.
Figure 8.Matching score distribution of the LDC-45-based finger vein recognition.
Figure 9.The ROC curve in the verification mode.
Verification performance by different methods.
| LLBP | 0.0225 | 0.7621 | 0.0877 |
| LDC-00 | 0.0116 | 0.4962 | 0.0653 |
| LDC-45 | 0.0102 | 0.4514 | 0.0468 |
Figure 10.Cumulative match curves by different methods.
Identification performance by different methods.
| LLBP | 99.78% | 135 |
| LDC-00 | 100% | 1 |
| LDC-45 | 100% | 1 |
Figure 11.The effects of using different vaules of parameter T.
The average preprocessing time for the LDC method.
| LDC | 53 ms | 16 ms | 12 ms |
| LLBP | 53 ms | 22 ms | 8 ms |