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Fingerprint Quality Indices for Predicting Authentication Performance

机译:预测认证性能的指纹质量指标

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摘要

The performance of an automatic fingerprint authentication system relies heavily on the quality of the captured fingerprint images. In this paper, two new quality indices for fingerprint images are developed. The first index measures the energy concentration in the frequency domain as a global feature. The second index measures the spatial coherence in local regions. We present a novel framework for evaluating and comparing quality indices in terms of their capability of predicting the system performance at three different stages, namely, image enhancement, feature extraction and matching. Experimental results on the IBM-HURSLEY and FVC2002 DB3 databases demonstrate that the global index is better than the local index in the enhancement stage (correlation of 0.70 vs. 0.50) and comparative in the feature extraction stage (correlation of 0.70 vs. 0.71). Both quality indices are effective in predicting the matching performance, and by applying a quality-based weighting scheme in the matching algorithm, the overall matching performance can be improved; a decrease of 1.94% in EER is observed on the FVC2002 DB3 database.
机译:自动指纹认证系统的性能在很大程度上取决于捕获的指纹图像的质量。本文提出了两种新的指纹图像质量指标。第一个指标将频域中的能量集中度作为全局特征进行测量。第二个指标衡量局部区域的空间连贯性。我们提出了一种新颖的框架,用于根据质量指标在三个不同阶段(即图像增强,特征提取和匹配)预测系统性能的能力来进行评估和比较。在IBM-HURSLEY和FVC2002 DB3数据库上的实验结果表明,在增强阶段(0.70对0.50的相关性),全局索引优于局部索引;在特征提取阶段(0.70对0.71的相关性),全局索引优于局部索引。这两个质量指标都可以有效地预测匹配性能,并且通过在匹配算法中应用基于质量的加权方案,可以提高总体匹配性能;在FVC2002 DB3数据库上观察到EER下降了1.94%。

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