The high variability of fingerprint data (owing to, e.g., differences in quality, moisture conditions, and scanners) makes the task of minutiae extraction challenging, particularly when approached from a stance that relies on tunable algorithmic components, such as image enhancement. We pose minutiae extraction as a machine learning problem and propose a deep neural network – MENet, for Minutiae Extraction Network – to learn a data-driven representation of minutiae points. By using the existing capabilities of several minutiae extraction algorithms, we establish a voting scheme to construct training data, and so train MENet in an automated fashion on a large dataset for robustness and portability, thus eliminating the need for tedious manual data labelling. We present a post-processing procedure that determines precise minutiae locations from the output of MENet. We show that MENet performs favourably in comparisons against existing minutiae extractors.
Reference:
Darlow, L.N. and Rosman, B.S. 2017. Fingerprint Minutiae Extraction using Deep Learning. International Joint Conference on Biometrics, 1-4 October 2017, Denver, Colorado, USA
Darlow, L. N., & Rosman, B. S. (2017). Fingerprint Minutiae Extraction using Deep Learning. http://hdl.handle.net/10204/9618
Darlow, Luke Nicholas, and Benjamin S Rosman. "Fingerprint Minutiae Extraction using Deep Learning." (2017): http://hdl.handle.net/10204/9618
Darlow LN, Rosman BS, Fingerprint Minutiae Extraction using Deep Learning; 2017. http://hdl.handle.net/10204/9618 .