Abstract

Biometrics based personal authentication has been found to be an effective method for recognizing, with high confidence, a person’s identity. With the emergence of reliable and inexpensive 3D scanners, recent years have witnessed a growing interest in developing 3D biometrics systems. As a commonsense, matching algorithms are crucial for such systems. In this paper, we focus on investigating identification methods for two specific 3D biometric identifiers, 3D ear and 3D palmprint. Specifically, we propose a Multi-Dictionary based Collaborative Representation (MDCR) framework for classification, which can reduce the negative effects aroused by some local regions. With MDCR, a range map is partitioned into overlapping blocks and, from each block, a feature vector is extracted. At the dictionary construction stage, feature vectors from blocks having the same locations in gallery samples can form a dictionary and, accordingly, multiple dictionaries are obtained. Given a probe sample, by coding its each feature vector on the corresponding dictionary, multiple class labels can be obtained and then we use a simple majority-based voting scheme to make the final decision. In addition, a novel patch-wise and statistics-based feature extraction scheme is proposed, combining the range image’s local surface type information and local dominant orientation information. The effectiveness of the proposed approach has been corroborated by extensive experiments conducted on two large-scale and widely-used benchmark datasets, the UND Collection J2 3D ear dataset and the PolyU 3D palmprint dataset. To make the results reproducible, we have publicly released the source code.

Highlights

  • With the heightened concerns about security [1], the need for reliable identity recognition techniques has significantly increased in the recent decade

  • We focus on investigating identification methods for two specific 3D biometric identifiers, 3D ear and 3D palmprint

  • We focus on two specific 3D biometric identifiers, 3D ear and 3D palmprint, whose associated recognition systems usually share a common architecture

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Summary

Introduction

With the heightened concerns about security [1], the need for reliable identity recognition techniques has significantly increased in the recent decade. Bolstered by the needs of various systems, including the immigration control, the aviation security, or the safeguarding of financial transactions, how to establish the person’s identity has attracted great interests of many research endeavors To address such an issue, biometric-based approaches, which are based on physical or behavioral characteristics of human beings, have recently been attracting increasing attention due to their friendliness and high accuracy. Reliable and cheap 3D scanners have emerged and can provide new choices for researchers to develop recognition systems based on 3D shape information. Compared with their 2D counterpart, 3D data samples have some inherent advantages.

Related Work and Our Contributions
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MDCR: Multi-Dictionary Based Collaborative Representation
Experiments
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