Abstract

Establishing correspondences between two minutia sets is a fundamental issue in fingerprint recognition. This paper proposes a new tensor matching strategy. First, the concept of minutia tensor matrix (simplified as MTM) is proposed. It describes the first-order features and second-order features of a matching pair. In the MTM, the diagonal elements indicate similarities of minutia pairs and non-diagonal elements indicate pairwise compatibilities between minutia pairs. Correct minutia pairs are likely to establish both large similarities and large compatibilities, so they form a dense sub-block. Minutia matching is then formulated as recovering the dense sub-block in the MTM. This is a new tensor matching strategy for fingerprint recognition. Second, as fingerprint images show both local rigidity and global nonlinearity, we design two different kinds of MTMs: local MTM and global MTM. Meanwhile, a two-level matching algorithm is proposed. For local matching level, the local MTM is constructed and a novel local similarity calculation strategy is proposed. It makes full use of local rigidity in fingerprints. For global matching level, the global MTM is constructed to calculate similarities of entire minutia sets. It makes full use of global compatibility in fingerprints. Proposed method has stronger description ability and better robustness to noise and nonlinearity. Experiments conducted on Fingerprint Verification Competition databases (FVC2002 and FVC2004) demonstrate the effectiveness and the efficiency.

Highlights

  • Fingerprint matching is a classical and hot topic in computer vision and pattern recognition [1]

  • Minutia matching is formulated as recovering the main dense sub-block in the minutia tensor matrix (MTM)

  • For each two local minutia topologic structures (LMTSs) pairs (LaLa', LbLb'), we evaluate their compatibility through their center minutiae

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Summary

Introduction

Fingerprint matching is a classical and hot topic in computer vision and pattern recognition [1]. Researchers have set up a series of special fingerprint verification competition databases [2] [3]. Establishing correspondences between fingerprint minutia sets is a fundamental issue in fingerprint recognition. It is challenging to find perfect correspondences for fingerprints due to various reasons: non-linear distortion, partial overlap, noise and so on. Many minutia-based fingerprint matching papers have been published these years. They can be mainly classified into two categories. The first category of these papers is to exact more matching features besides minutia locations and orientations. Jain et al used pores and ridge contours besides minutia points and proposed a three-level

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