Perfect Fingerprint Orientation Fields by Locally Adaptive Global Models

Fingerprint recognition is widely used for verification and identification in many commercial, governmental and forensic applications. The orientation field (OF) plays an important role at various processing stages in fingerprint recognition systems. OFs are used for image enhancement, fingerprint a...

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Veröffentlicht in:arXiv.org 2016-06
Hauptverfasser: Gottschlich, Carsten, Tams, Benjamin, Huckemann, Stephan
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description Fingerprint recognition is widely used for verification and identification in many commercial, governmental and forensic applications. The orientation field (OF) plays an important role at various processing stages in fingerprint recognition systems. OFs are used for image enhancement, fingerprint alignment, for fingerprint liveness detection, fingerprint alteration detection and fingerprint matching. In this paper, a novel approach is presented to globally model an OF combined with locally adaptive methods. We show that this model adapts perfectly to the 'true OF' in the limit. This perfect OF is described by a small number of parameters with straightforward geometric interpretation. Applications are manifold: Quick expert marking of very poor quality (for instance latent) OFs, high fidelity low parameter OF compression and a direct road to ground truth OFs markings for large databases, say. In this contribution we describe an algorithm to perfectly estimate OF parameters automatically or semi-automatically, depending on image quality, and we establish the main underlying claim of high fidelity low parameter OF compression.
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subjects Algorithms
Biometric recognition systems
Computer Science - Computer Vision and Pattern Recognition
Fingerprint verification
Fingerprinting
Ground truth
Image detection
Image enhancement
Image quality
Mathematical models
Object recognition
Parameter estimation
title Perfect Fingerprint Orientation Fields by Locally Adaptive Global Models
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