| Literature DB >> 22163632 |
Shan Juan Xie1, Sook Yoon, Jinwook Shin, Dong Sun Park.
Abstract
Recognizing the quality of fingerprints in advance can be beneficial for improving the performance of fingerprint recognition systems. The representative features to assess the quality of fingerprint images from different types of capture sensors are known to vary. In this paper, an effective quality estimation system that can be adapted for different types of capture sensors is designed by modifying and combining a set of features including orientation certainty, local orientation quality and consistency. The proposed system extracts basic features, and generates next level features which are applicable for various types of capture sensors. The system then uses the Support Vector Machine (SVM) classifier to determine whether or not an image should be accepted as input to the recognition system. The experimental results show that the proposed method can perform better than previous methods in terms of accuracy. In the meanwhile, the proposed method has an ability to eliminate residue images from the optical and capacitive sensors, and the coarse images from thermal sensors.Entities:
Keywords: SVM; fingerprints; quality estimation; recognition; sensor
Mesh:
Year: 2010 PMID: 22163632 PMCID: PMC3231206 DOI: 10.3390/s100907896
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Fingerprint images from different capture sensors: (a) optical sensor, (b) capacitive sensor and (c) thermal sensor.
Summary of Representative Quality Measures.
| OCL: Orientation certainty level | |
| Energy: Energy concentration in ring-shaped regions of the spectrum. | |
| NFIS: Matcher performance, use the degree of separation between the match and non-match distributions |
Figure 2.Fingerprint image quality estimation system.
Figure 3.Fingerprint blocks with variable orientation certainty.
Classification levels of the orientation certainty value.
| 0.8 ≤ OCL ≤ 1 | Good block |
| 0.4 ≤ OCL < 0.8 | Normal block |
| 0.01 ≤OCL< 0.4 | Bad block |
| 0 ≤ OCL < 0.01 | Very bad block or background |
Figure 4.The distribution of four optical sensor features.
Figure 5.Quadrants of the Original LOQ measure.
Figure 6.The basic idea of the LOQ measure.
Information on the capture sensor of the database.
| FVC2000 | DB1_B, DB3_B | DB2_B | - |
| FVC2002 | DB1_A,DB2_A | DB3_A | - |
| FVC2004 | DB1_A,DB2_A | - | DB3_A |
Figure 7.Quality distribution of the databases by the relabeled NFIS method.
Comparison of the classification accuracy rate when a single quality measure is used.
| OCL | CM | LOQ | OCL | CM | LOQ | |
|---|---|---|---|---|---|---|
| Optical | 80.05% | 81.68% | 77.86% | 87.50% | 81.99% | 81.86% |
| Capacitive | 83.18% | 74.62% | 87.79% | 90.56% | 81.61% | 89.10% |
| Thermal | 78.84% | 77.90% | 78.72% | 81.96% | 89.42% | 83.04% |
Comparison of the classification accuracy rate when combined quality measures are used.
| Optical | 92.62% | 91.25% | 91.00% | 95.62% |
| Capacitive | 93.25% | 91.88% | 92.38% | 95.50% |
| Thermal | 94.00% | 93.95% | 86.14% | 96.25% |
Figure 8.Examples of the residue images captured by optical sensors.
Classification results of residue images by the proposed method and NFIS method.
| 44 | 1 | 0 | 43 | 2 | 0 | ||
| 2 | 21 | 0 | 4 | 19 | 0 | ||
| 0 | 0 | 14 | 2 | 2 | 10 | ||
Figure 9.Examples of images captured by thermal sensors with different roughness and their results obtained from two different quality estimation methods.