人脸识别的不确定性感知比较分数

Marco Huber, Philipp Terhörst, Florian Kirchbuchner, Arjan Kuijper, N. Damer
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引用次数: 1

摘要

随着人脸识别系统在全球范围内的普及以及处理隐私和安全相关数据,对人脸识别系统中不确定性的估计和理解越来越受到关注。在这项工作中,我们研究了如何进一步利用这些不确定性来提高准确性,从而提高自动人脸识别系统的信任度。我们提出利用提取的人脸特征的不确定性来计算新的不确定性感知比较分数(UACS)。该分数在计算比较分数时考虑了估计的不确定度,从而减少了验证误差。为了实现这一点,我们将比较分数及其不确定性建模为概率分布,并测量其与理想真实比较分布的距离。在三个人脸识别模型和六个基准的扩展实验中,我们研究了我们的方法的影响,并证明了它在提高验证性能和真假比较分数可分性方面的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty-aware Comparison Scores for Face Recognition
Estimating and understanding uncertainty in face recognition systems is receiving increasing attention as face recognition systems spread worldwide and process privacy and security-related data. In this work, we investigate how such uncertainties can be further utilized to increase the accuracy and therefore the trust of automatic face recognition systems. We propose to use the uncertainties of extracted face features to compute a new uncertainty-aware comparison score (UACS). This score takes into account the estimated uncertainty during the calculation of the comparison score, leading to a reduction in verification errors. To achieve this, we model the comparison score and its uncertainty as a probability distribution and measure its distance to a distribution of an ideal genuine comparison. In extended experiments with three face recognition models and on six benchmarks, we investigated the impact of our approach and demonstrated its benefits in enhancing the verification performance and the genuine-imposter comparison scores separability.
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