Towards A Comprehensive Visual Saliency Explanation Framework for AI-based Face Recognition Systems
Yuhang Lu, Zewei Xu, Touradj Ebrahimi

TL;DR
This paper introduces a comprehensive framework for explaining AI-based face recognition, including a new model-agnostic saliency method called CorrRISE and an evaluation methodology, demonstrating its effectiveness across verification and identification scenarios.
Contribution
It proposes a unified explanation framework for face recognition, introduces CorrRISE for saliency mapping, and develops an evaluation method for explanation quality.
Findings
CorrRISE produces insightful saliency maps.
CorrRISE outperforms state-of-the-art methods in similarity map accuracy.
The framework effectively evaluates explanation methods in face recognition.
Abstract
Over recent years, deep convolutional neural networks have significantly advanced the field of face recognition techniques for both verification and identification purposes. Despite the impressive accuracy, these neural networks are often criticized for lacking explainability. There is a growing demand for understanding the decision-making process of AI-based face recognition systems. Some studies have investigated the use of visual saliency maps as explanations, but they have predominantly focused on the specific face verification case. The discussion on more general face recognition scenarios and the corresponding evaluation methodology for these explanations have long been absent in current research. Therefore, this manuscript conceives a comprehensive explanation framework for face recognition tasks. Firstly, an exhaustive definition of visual saliency map-based explanations for…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Advanced Neural Network Applications
