基于自适应模板的指纹细节定位与质量评估贝叶斯方法

Nathan J. Short, A. L. Abbott, M. Hsiao, E. Fox
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引用次数: 9

摘要

指纹仍然是人类身份识别的可靠特征。基于特征的匹配技术,如自动指纹识别系统(AFIS)所使用的匹配技术,已经在相对大范围的高质量指纹的微小匹配中取得了显著的成功。然而,随着图像质量的下降和获取的指纹面积的减少,可以自动检测到的可靠细节的数量减少,导致匹配性能受到影响。本文提出了一种提高指纹图像特征提取精度的新方法。这是通过改进的细节定位和质量评估程序来完成的,这些程序部分受到人类视觉感知的启发。初步结果表明,应用该定位方法后,指纹特征集的识别准确率提高了88.2%。当使用建议的质量评估时,发现98.6%的指纹图像的真实细节的平均质量有所提高。结果是利用516个具有地面真值细节的指纹数据库获得的。
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A Bayesian approach to fingerprint minutia localization and quality assessment using adaptable templates
Fingerprints continue to serve as a reliable trait for human identification. Feature-based matching techniques, such as those used by Automated Fingerprint Identification Systems (AFIS), have demonstrated remarkable success in minutiae-based matching from good quality prints with relatively large extent. As the image quality degrades and acquired fingerprint area decreases, however, the number of reliable minutiae that can be automatically detected decreases, causing match performance to suffer. This paper presents a novel approach to improving the precision of features that can be extracted from fingerprint images. This is accomplished through improved minutia localization and quality assessment routines that are inspired in part by human visual perception. Initial results have shown an improvement in minutia accuracy for 88.2% of fingerprint minutia sets after applying the proposed localization method. An increase in average quality of true minutiae was found for 98.6% of the fingerprint images when using the proposed quality assessment. The results were obtained using a database of 516 fingerprints with ground truth minutiae.
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