人脸识别中影响量的估计

G. Betta, D. Capriglione, M. Corvino, C. Liguori, A. Paolillo
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引用次数: 9

摘要

目前,基于人脸识别的生物识别系统的不确定性问题一直是科学界关注的热点问题。这是由于在安全、安保和访问控制等关键应用中越来越多地部署此类系统。在此背景下,作者致力于设计不确定性建模和评估的通用方法,旨在实现具有内置不确定性评估能力的基于人脸识别的生物识别系统。这样,识别系统的输出将不是被观察对象的身份,而是每个可能对象的置信度。在以前的论文中,作者已经确定了影响的数量,并提出了一个合适的不确定性模型。所提出的模型的核心是关于在适当的参考条件下获得的相应值的影响量所假定的值的知识。本文主要分析了这些测量问题,这是开发具有内置不确定度评估能力的系统的基本步骤。初步结果表明,采用所提出的方法得到的统计指标和先验估计之间有很好的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of influence quantities in face recognition
Nowadays, the matter of uncertainty in face recognition based biometric systems is a relevant issue for the scientific community. This is due to the even more increasing deployment of such systems in critical applications as safety, security and access control, to cite a few. In this context, the authors are engaged in the design of general methods for uncertainty modeling and evaluation aimed at realizing face recognition based biometric systems with built-in uncertainty evaluation capability. In this way, the output of a recognition system will not be the identity of the observed subject, but a confidence level for each possible subject. In previous papers the authors have identified the quantities of influence and have proposed a suitable uncertainty model. Core of the proposed model is the knowledge of the value assumed by the quantities of influence with respect to the corresponding values achieved in suitable reference conditions. This paper mainly analyzes these measurement issues, a fundamental step toward the development of such systems with built-in uncertainty evaluation capability. First results show a good agreement between statistical indicators and a priori estimations achieved with the proposed method.
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