Article ID Journal Published Year Pages File Type
536696 Pattern Recognition Letters 2007 11 Pages PDF
Abstract

The singular points, core and delta, are widely used in fingerprint classification. However a true pair of core and delta that are close to one another is often ignored. In this paper, we define a new type of singular point denoted by SCD for representing a pair of core and delta. A new algorithm based on the distribution of Gaussian–Hermite moments is used to detect SCD. With core, delta and SCD, the accuracy of fingerprint classification is improved, especially for tented arches. The proposed method has been tested on the NIST-4. We can improve the accuracy of algorithm (Zhang and Yan, 2004) [Zhang, Q., Yan, H., 2004. Fingerprint classification based on extraction and analysis of singularities and pseudo ridges. Pattern Recognit. 37, 2233–2243] by 26.7% for identifying tented arch, and the classification accuracy can be improved by 4.3% for five-class problem.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
Authors
, ,