Manual fingerprint classification algorithms are very time consuming, and usually not accurate. Fast and accurate fingerprint classification is essential to each AFIS (Automatic Fingerprint Identification System). This paper investigates a fingerprint classification algorithm that reduces the complexity and costs associated with the fingerprint identification procedure. A new structural algorithm for classification of fingerprints is described. This algorithm is based on structural features: "core" and "delta", and their orientation. The accuracy and speed of the proposed method is tested for a large number of fingerprint images with different initial qualities. The results are independent of image orientation and, show a significant classification performance.
M. H. Ghassemian Yazdi, (1999). An Automatic Fingerprint Classification Algorithm. Journal of Advanced Materials in Engineering (Esteghlal), 18(1), 1-11.
MLA
M. H. Ghassemian Yazdi. "An Automatic Fingerprint Classification Algorithm", Journal of Advanced Materials in Engineering (Esteghlal), 18, 1, 1999, 1-11.
HARVARD
M. H. Ghassemian Yazdi, (1999). 'An Automatic Fingerprint Classification Algorithm', Journal of Advanced Materials in Engineering (Esteghlal), 18(1), pp. 1-11.
VANCOUVER
M. H. Ghassemian Yazdi, An Automatic Fingerprint Classification Algorithm. Journal of Advanced Materials in Engineering (Esteghlal), 1999; 18(1): 1-11.