An essential factor to achieve high performance in face recognition systems is the quality of its samples. Since these systems are involved in various daily life there is a strong need of making face recognition processes understandable for humans. In this work, we introduce the concept of pixel-level face image quality that determines the utility of pixels in a face image for recognition. Given an arbitrary face recognition network, in this work, we propose a training-free approach to assess the pixel-level qualities of a face image. To achieve this, a model-specific quality value of the input image is estimated and used to build a sample-specific quality regression model. Based on this model, quality-based gradients are back-propagated and converted into pixel-level quality estimates. In the experiments, we qualitatively and quantitatively investigated the meaningfulness of the pixel-level qualities based on real and artificial disturbances and by comparing the explanation maps on ICAO-incompliant faces. In all scenarios, the results demonstrate that the proposed solution produces meaningful pixel-level qualities. The code is publicly available.
翻译:在面部识别系统中实现高性能的一个基本要素是其样本的质量。由于这些系统涉及各种日常生活,因此非常需要使面部识别过程为人类所理解。在这项工作中,我们引入了像素面部图像质量的概念,以决定像素在面部图像中的效用。考虑到一个任意的面部识别网络,我们在这项工作中提议了一种无培训的方法来评估面部图像的像素质量。为了实现这一点,对输入图像的模型特定质量价值进行了估计,并用于构建一个样本特定质量回归模型。基于这一模型,基于质量的梯度被反射并转换成像素质量估计。在实验中,我们从质量和数量上调查了以真实和人为干扰为基础的像素水平质量是否有意义,并比较了民航组织不合规面部的解释图。在所有假设中,结果都表明,拟议的解决方案产生了有意义的像素水平质量。代码是公开提供的。