Darlow, Luke NicholasRosman, Benjamin S2017-09-292017-09-292017-10Darlow, L.N. and Rosman, B.S. 2017. Fingerprint Minutiae Extraction using Deep Learning. International Joint Conference on Biometrics, 1-4 October 2017, Denver, Colorado, USAhttp://www.ijcb2017.org/ijcb2017/program.phphttps://www.benjaminrosman.com/papers.htmlhttp://hdl.handle.net/10204/9618International Joint Conference on Biometrics, 1-4 October 2017, Denver, Colorado, USAThe 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.enFingerprint detectionMinutiae detectionDeep learningFingerprint Minutiae Extraction using Deep LearningConference PresentationDarlow, L. N., & Rosman, B. S. (2017). Fingerprint Minutiae Extraction using Deep Learning. http://hdl.handle.net/10204/9618Darlow, Luke Nicholas, and Benjamin S Rosman. "Fingerprint Minutiae Extraction using Deep Learning." (2017): http://hdl.handle.net/10204/9618Darlow LN, Rosman BS, Fingerprint Minutiae Extraction using Deep Learning; 2017. http://hdl.handle.net/10204/9618 .TY - Conference Presentation AU - Darlow, Luke Nicholas AU - Rosman, Benjamin S AB - 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. DA - 2017-10 DB - ResearchSpace DP - CSIR KW - Fingerprint detection KW - Minutiae detection KW - Deep learning LK - https://researchspace.csir.co.za PY - 2017 T1 - Fingerprint Minutiae Extraction using Deep Learning TI - Fingerprint Minutiae Extraction using Deep Learning UR - http://hdl.handle.net/10204/9618 ER -