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Open AccessJournal ArticleDOI

Biometric quality: a review of fingerprint, iris, and face

TLDR
The analysis of the characteristic function of quality and match scores shows that a careful selection of complimentary set of quality metrics can provide more benefit to various applications of biometric quality.
Abstract
Biometric systems encounter variability in data that influence capture, treatment, and u-sage of a biometric sample. It is imperative to first analyze the data and incorporate this understanding within the recognition system, making assessment of biometric quality an important aspect of biometrics. Though several interpretations and definitions of quality exist, sometimes of a conflicting nature, a holistic definition of quality is indistinct. This paper presents a survey of different concepts and interpretations of biometric quality so that a clear picture of the current state and future directions can be presented. Several factors that cause different types of degradations of biometric samples, including image features that attribute to the effects of these degradations, are discussed. Evaluation schemes are presented to test the performance of quality metrics for various applications. A survey of the features, strengths, and limitations of existing quality assessment techniques in fingerprint, iris, and face biometric are also presented. Finally, a representative set of quality metrics from these three modalities are evaluated on a multimodal database consisting of 2D images, to understand their behavior with respect to match scores obtained from the state-of-the-art recognition systems. The analysis of the characteristic function of quality and match scores shows that a careful selection of complimentary set of quality metrics can provide more benefit to various applications of biometric quality.

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Citations
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Journal ArticleDOI

Demographic Bias in Biometrics: A Survey on an Emerging Challenge

TL;DR: The main contributions of this article are an overview of the topic of algorithmic bias in the context of biometrics, a comprehensive survey of the existing literature on biometric bias estimation and mitigation, and a discussion of the pertinent technical and social matters.
Journal ArticleDOI

A comprehensive overview of biometric fusion

TL;DR: A comprehensive review of techniques incorporating ancillary information in the biometric recognition pipeline is presented in this paper, where the authors provide a comprehensive overview of the role of information fusion in biometrics.
Journal ArticleDOI

Representation Learning by Rotating Your Faces

TL;DR: A Disentangled Representation learning-Generative Adversarial Network (DR-GAN) with three distinct novelties that demonstrate the superiority of DR-GAN over the state of the art in both learning representations and rotating large-pose face images.
Journal ArticleDOI

Ocular biometrics

TL;DR: A path forward is proposed to advance the research on ocular recognition by improving the sensing technology, heterogeneous recognition for addressing interoperability, utilizing advanced machine learning algorithms for better representation and classification, and developing algorithms for ocular Recognition at a distance.
References
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Proceedings ArticleDOI

Quality-Based Fusion for Multichannel Iris Recognition

TL;DR: A quality-based fusion scheme for improving the recognition accuracy using color iris images characterized by three spectral channels - Red, Green and Blue which is employed to select two channels which are fused at the image level using a Redundant Discrete Wavelet Transform.
Proceedings ArticleDOI

Impact of combining quality measures on biometric sample matching

TL;DR: This paper revisits the problem from a pattern classification perspective, and shows that using individual quality measures as separate classification features frequently leads to a superior performance of a biometric system in comparison with the system in which quality measures are mapped into one quality score.
Journal ArticleDOI

Wave atoms based compression method for fingerprint images

TL;DR: A comparative study of different transforms shows that wave atom transform is more appropriate than wavelets for fingerprint image compression.
Proceedings ArticleDOI

On co-training online biometric classifiers

TL;DR: The proposed co-training online classifier update algorithm is presented as a semi-supervised learning task and is applied to a face verification application and experiments indicate that the proposed algorithm improves the performance both in terms of classification accuracy and computational time.
Proceedings ArticleDOI

Adaptive biometric authentication using nonlinear mappings on quality measures and verification scores

TL;DR: Three methods to improve the performance of biometric matchers based on vectors of quality measures associated with biometric samples are described, which are suitable for any biometric modality and show significant performance improvements when applied to iris biometrics.
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