论文标题
指纹图像质量估计及其应用于多重验证
Fingerprint Image-Quality Estimation and its Application to Multialgorithm Verification
论文作者
论文摘要
已经发现信号质量的意识可提高识别率,并在多传感器环境中大大支持决策。然而,自动质量评估仍然是一个空旷的问题。在这里,我们研究指纹图像的方向张量,以量化信号障碍,例如噪声,缺乏结构,模糊,借助对称描述符。大量降低的参考文献在生物识别方面尤其有利,但是更少的信息对于该方法不足。涉及更简单的质量估计器,经过训练的方法(NFIQ)以及人类对多个公共数据库指纹质量的看法也支持了这一点。此外,质量测量得到了广泛的重复使用,以适应融合参数,以在单型多物指纹识别环境中适应融合参数。在这项研究中,研究了几个训练有素且未经训练的得分水平融合方案。提出了一种基于贝叶斯的策略,用于纳入专家过去的表现和当前质量条件,这是一种新颖的计算效率方案,除了简单的融合规则外。定量结果有利于各个方面的质量意识,提高识别率并有效地融合了不同技能的专家(通过培训)。
Signal-quality awareness has been found to increase recognition rates and to support decisions in multisensor environments significantly. Nevertheless, automatic quality assessment is still an open issue. Here, we study the orientation tensor of fingerprint images to quantify signal impairments, such as noise, lack of structure, blur, with the help of symmetry descriptors. A strongly reduced reference is especially favorable in biometrics, but less information is not sufficient for the approach. This is also supported by numerous experiments involving a simpler quality estimator, a trained method (NFIQ), as well as the human perception of fingerprint quality on several public databases. Furthermore, quality measurements are extensively reused to adapt fusion parameters in a monomodal multialgorithm fingerprint recognition environment. In this study, several trained and nontrained score-level fusion schemes are investigated. A Bayes-based strategy for incorporating experts past performances and current quality conditions, a novel cascaded scheme for computational efficiency, besides simple fusion rules, is presented. The quantitative results favor quality awareness under all aspects, boosting recognition rates and fusing differently skilled experts efficiently as well as effectively (by training).