论文标题
生物识别质量:审查和应用面对面的识别
Biometric Quality: Review and Application to Face Recognition with FaceQnet
论文作者
论文摘要
“计算机系统的输出只能与输入的信息一样准确。”这种相当微不足道的陈述是生物识别识别中的驱动概念之一的基础:生物识别质量。如今,质量被广泛认为是负责自动化生物识别系统良好或不良性能的第一因素。它是指生物识别样本用于识别目的的能力,并产生一致,准确和可靠的结果。这样的主观术语是由所谓的生物识别指标客观地估计的。如今,这些算法在系统的正确功能中起着关键作用,向用户提供反馈并作为宝贵的审计工具工作。尽管它们一致接受的相关性,但在这些方法的开发中仍缺乏一些最常用和最受部署的生物特征。面部识别就是这种情况。在对生物识别质量的一般主题进行温和介绍以及对面部质量指标的过去努力的回顾之后,我们通过开发FaceQnet来满足对更好的面部质量指标的需求。 FaceQnet是一种新颖的开源面部质量评估工具,灵感来自深度学习技术,该技术将标量质量度量分配给面部图像,以预测其识别精度。在这项工作和NIST中,对FaceQnet的两个版本都经过了彻底的评估,表明了该方法的合理性及其相对于当前最新指标的竞争力。即使我们的工作在这里特别是在Face Biometrics的框架中介绍,但构建完全自动化质量指标的拟议方法也非常有用,并且很容易适应其他人工智能任务。
"The output of a computerised system can only be as accurate as the information entered into it." This rather trivial statement is the basis behind one of the driving concepts in biometric recognition: biometric quality. Quality is nowadays widely regarded as the number one factor responsible for the good or bad performance of automated biometric systems. It refers to the ability of a biometric sample to be used for recognition purposes and produce consistent, accurate, and reliable results. Such a subjective term is objectively estimated by the so-called biometric quality metrics. These algorithms play nowadays a pivotal role in the correct functioning of systems, providing feedback to the users and working as invaluable audit tools. In spite of their unanimously accepted relevance, some of the most used and deployed biometric characteristics are lacking behind in the development of these methods. This is the case of face recognition. After a gentle introduction to the general topic of biometric quality and a review of past efforts in face quality metrics, in the present work, we address the need for better face quality metrics by developing FaceQnet. FaceQnet is a novel open-source face quality assessment tool, inspired and powered by deep learning technology, which assigns a scalar quality measure to facial images, as prediction of their recognition accuracy. Two versions of FaceQnet have been thoroughly evaluated both in this work and also independently by NIST, showing the soundness of the approach and its competitiveness with respect to current state-of-the-art metrics. Even though our work is presented here particularly in the framework of face biometrics, the proposed methodology for building a fully automated quality metric can be very useful and easily adapted to other artificial intelligence tasks.