Publication: A CNN based rotation invariant fingerprint recognition system
No Thumbnail Available
Date
2017
Authors
Çelik Mayadağlı, Tuba
Saatçı, Ertuğrul
Rifat, Edizkan
Journal Title
Journal ISSN
Volume Title
Publisher
Istanbul Unıv, Fac Engineering, Elektrik-Elektronik Mühendisliği Bölümü, Avcılar Kampüsü, İstanbul, 34320, Turkey
Abstract
This paper presents a Cellular Neural Networks (CNN) based rotation invariant fingerprint recognition system by keeping the hardware implementability in mind. Core point was used as a reference point and detection of the core point was implemented in the CNN framework. Proposed system consists of four stages: preprocessing, feature extraction, false feature elimination and matching. Preprocessing enhances the input fingerprint image. Feature extraction creates rotation invariant features by using core point as a reference point. False feature elimination increases the system performance by removing the false minutiae points. Matching stage compares extracted features and creates a matching score. Recognition performance of the proposed system has been tested by using high resolution PolyU HRF DBII database. The results are very encouraging for implementing a CNN based fully automatic rotation invariant fingerprint recognition system.
Description
Keywords
Fingerprint, Cellular Neural Networks, Rotation Invariant, Fingerprint Recognition System, Cellular Neural-Networks, Time, Architecture, Emulator, Space