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Flag: The fault-line analytic graph and fingerprint classification

Posted on:1999-01-20Degree:Ph.DType:Dissertation
University:New Jersey Institute of TechnologyCandidate:Huang, Ching-YuFull Text:PDF
GTID:1468390014469917Subject:Computer Science
Abstract/Summary:
Fingerprints can be classified into millions of groups by quantitative measurements of their new representations--Fault-Line Analytic Graphs (FLAG), which describe the relationship between ridge flows and singular points. This new model is highly mathematical, therefore, human interpretation can be reduced to a minimum and the time of identification can be significantly reduced.; There are some well known features on fingerprints such as singular points, cores and deltas, which are global features which characterize the fingerprint pattern class, and minutiae which are the local features which characterize an individual fingerprint image. Singular points are more important than minutiae when classifying fingerprints because the geometric relationship among the singular points decide the type of fingerprints.; When the number of fingerprint records becomes large, the current methods need to compare a large number of fingerprint candidates to identify a given fingerprint. This is the result of having a few synthetic types to classify a database with millions of fingerprints. It has been difficult to enlarge the number of classification groups because there was no computational method to systematically describe the geometric relationship among singular points and ridge flows. In order to define a more efficient classification method, this dissertation also provides a systematic approach to detect singular points with almost pinpoint precision of 2 x 2 pixels using efficient algorithms.
Keywords/Search Tags:Fingerprint, Singular points
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