In the context of biometrics, matching confidence refers to the confidence that a given matching decision is correct. Since many biometric systems operate in critical decision-making processes, such as in forensics investigations, accurately and reliably stating the matching confidence becomes of high importance. Previous works on biometric confidence estimation can well differentiate between high and low confidence, but lack interpretability. Therefore, they do not provide accurate probabilistic estimates of the correctness of a decision. In this work, we propose a probabilistic interpretable comparison (PIC) score that accurately reflects the probability that the score originates from samples of the same identity. We prove that the proposed approach provides optimal matching confidence. Contrary to other approaches, it can also optimally combine multiple samples in a joint PIC score which further increases the recognition and confidence estimation performance. In the experiments, the proposed PIC approach is compared against all biometric confidence estimation methods available on four publicly available databases and five state-of-the-art face recognition systems. The results demonstrate that PIC has a significantly more accurate probabilistic interpretation than similar approaches and is highly effective for multi-biometric recognition. The code is publicly-available.
翻译:在生物鉴别学方面,匹配信任是指对某一匹配决定正确与否的信心。由于许多生物鉴别系统在法医调查等关键决策过程中运作,因此准确可靠地说明匹配信任便变得非常重要。生物鉴别信任估计以前的工作可以区分高信任度和低信任度,但缺乏可解释性。因此,它们不能对某项决定的正确性提供准确的概率估计。在这项工作中,我们建议进行概率可解释的比较(PIC)分数,准确反映得分来自同一身份样本的概率。我们证明,拟议的方法提供了最佳匹配信心。与其他方法相反,它也可以在共同的石化评分中以最佳的方式将多个样本结合起来,进一步提高识别和信心估计性能。在试验中,将拟议的PIC方法与四个公开数据库和五个最先进的面识辨系统现有的所有生物鉴别性信任估计方法进行比较。结果表明,PIC具有比类似方法更准确得多的概率解释,并且对于多维度识别非常有效。该代码可以公开使用。