论文标题
指纹识别系统的白盒评估
White-Box Evaluation of Fingerprint Recognition Systems
论文作者
论文摘要
指纹识别系统的典型评估包括端到端的黑框评估,这些评估评估了整体识别或身份验证准确性方面的性能。但是,这些系统性能的黑框测试并未揭示有关单个模块性能的见解,包括图像采集,特征提取和匹配。另一方面,白框评估是本文的主题,请隔离每个组成模块的个体性能。尽管一些研究对指纹读取器,功能提取器和匹配组件进行了白盒评估,但没有现有的研究提供了完整的系统,即对指纹识别系统每个阶段中引入的不确定性的完整系统分析。在这项工作中,我们扩展了先前对指纹识别系统组件的白色框评估,并根据汇总的白盒评估结果对指纹识别系统性能进行了统一的,深入的分析。特别是,由于不良捕获条件(即在获取时,不同的照明,水分和压力),我们分析了指纹识别系统每个阶段中引入的不确定性。我们的实验表明,就黑盒识别性能而言,总体执行效果更好的系统在指纹识别系统管道中的每个模块中不一定会表现最好,只能通过对每个子模块的白盒分析来看到该系统。诸如这些发现使研究人员能够更好地集中精力改善指纹识别系统。
Typical evaluations of fingerprint recognition systems consist of end-to-end black-box evaluations, which assess performance in terms of overall identification or authentication accuracy. However, these black-box tests of system performance do not reveal insights into the performance of the individual modules, including image acquisition, feature extraction, and matching. On the other hand, white-box evaluations, the topic of this paper, measure the individual performance of each constituent module in isolation. While a few studies have conducted white-box evaluations of the fingerprint reader, feature extractor, and matching components, no existing study has provided a full system, white-box analysis of the uncertainty introduced at each stage of a fingerprint recognition system. In this work, we extend previous white-box evaluations of fingerprint recognition system components and provide a unified, in-depth analysis of fingerprint recognition system performance based on the aggregated white-box evaluation results. In particular, we analyze the uncertainty introduced at each stage of the fingerprint recognition system due to adverse capture conditions (i.e., varying illumination, moisture, and pressure) at the time of acquisition. Our experiments show that a system that performs better overall, in terms of black-box recognition performance, does not necessarily perform best at each module in the fingerprint recognition system pipeline, which can only be seen with white-box analysis of each sub-module. Findings such as these enable researchers to better focus their efforts in improving fingerprint recognition systems.