It is challenging to derive explainability for unsupervised or statistical-based face image quality assessment (FIQA) methods. In this work, we propose a novel set of explainability tools to derive reasoning for different FIQA decisions and their face recognition (FR) performance implications. We avoid limiting the deployment of our tools to certain FIQA methods by basing our analyses on the behavior of FR models when processing samples with different FIQA decisions. This leads to explainability tools that can be applied for any FIQA method with any CNN-based FR solution using activation mapping to exhibit the network's activation derived from the face embedding. To avoid the low discrimination between the general spatial activation mapping of low and high-quality images in FR models, we build our explainability tools in a higher derivative space by analyzing the variation of the FR activation maps of image sets with different quality decisions. We demonstrate our tools and analyze the findings on four FIQA methods, by presenting inter and intra-FIQA method analyses. Our proposed tools and the analyses based on them point out, among other conclusions, that high-quality images typically cause consistent low activation on the areas outside of the central face region, while low-quality images, despite general low activation, have high variations of activation in such areas. Our explainability tools also extend to analyzing single images where we show that low-quality images tend to have an FR model spatial activation that strongly differs from what is expected from a high-quality image where this difference also tends to appear more in areas outside of the central face region and does correspond to issues like extreme poses and facial occlusions. The implementation of the proposed tools is accessible here [link].
翻译:在这项工作中,我们提出一套新的解释工具,用以为FIQA的不同决定及其面部识别(FR)绩效影响推理出不同的FIQA决定的推理;我们避免将工具的部署限于FIQA方法的某些方法,方法是在对FIQA不同决定的样本进行处理时,根据FIQA模型的行为进行分析;这导致解释工具,可用于FIQA方法,任何基于CNN的空基FR解决方案,利用启动绘图展示网络从面部嵌入的动态。为避免FIA模型中低质量图像总体空间激活制图及其面部识别影响之间的低差异,我们避免在高衍生空间建立我们的工具;我们展示了我们的工具,分析关于FIQA方法的四种方法的研究结果,同时介绍内部和内部的低质量方法分析。我们提出的工具和基于这些方法的分析表明,除其他结论外,高质量图像通常导致核心区域持续低水平的动态,同时解释我们核心区域中低质量区域的预期变化。