使用无参考图像质量度量的指纹质量评估

Mohamad El-Abed, A. Ninassi, C. Charrier, C. Rosenberger
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引用次数: 21

摘要

获得的生物识别原始数据的质量评估是非常重要的,因为它深刻影响生物识别系统的性能,从而影响它们的可用性。低质量的样本增加了注册失败,降低了系统性能。本文提出了一种新的指纹质量评价指标。它的主要独创性在于使用无参考图像质量度量。提出的质量度量通过遗传算法优化的加权和将两类参数组合在一起:1)图像质量准则和2)基于模式的质量准则(基于显著特征和基于补丁的特征)。使用BOZORTH3匹配系统和FVC2002 DB3指纹数据库来阐明所提出的质量度量的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fingerprint quality assessment using a no-reference image quality metric
The quality assessment of the acquired biometric raw data is very important as it deeply affects the performance of biometric systems and consequently their usability. Poor quality samples increase the enrolment failures, and decrease the system performance. In this paper, we present a new quality assessment metric of fingerprints. Its main originality lies in the use of a no-reference image quality metric. The proposed quality metric combines two types of parameters through a weighted sum optimized by a genetic algorithm: 1) image quality criterion and 2) pattern-based quality criteria (salient and patch-based features). BOZORTH3 matching system and the FVC2002 DB3 fingerprint database are used to clarify the benefits of the presented quality metric.
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