CVMay 18, 2015

Global Variational Method for Fingerprint Segmentation by Three-part Decomposition

arXiv:1505.04585v137 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for fingerprint recognition systems used in daily applications like unlocking devices.

The authors tackled fingerprint image segmentation by proposing a global three-part decomposition (G3PD) method, which outperformed five state-of-the-art methods on a benchmark of 10560 images in terms of segmentation accuracy.

Verifying an identity claim by fingerprint recognition is a commonplace experience for millions of people in their daily life, e.g. for unlocking a tablet computer or smartphone. The first processing step after fingerprint image acquisition is segmentation, i.e. dividing a fingerprint image into a foreground region which contains the relevant features for the comparison algorithm, and a background region. We propose a novel segmentation method by global three-part decomposition (G3PD). Based on global variational analysis, the G3PD method decomposes a fingerprint image into cartoon, texture and noise parts. After decomposition, the foreground region is obtained from the non-zero coefficients in the texture image using morphological processing. The segmentation performance of the G3PD method is compared to five state-of-the-art methods on a benchmark which comprises manually marked ground truth segmentation for 10560 images. Performance evaluations show that the G3PD method consistently outperforms existing methods in terms of segmentation accuracy.

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