TL;DR
This paper introduces the first comprehensive benchmark and evaluation protocol for explainable face recognition, focusing on understanding which facial regions influence matching decisions, and proposes new attention methods that outperform existing techniques.
Contribution
It provides a new evaluation protocol called the inpainting game, a benchmark dataset, and introduces two novel attention algorithms for explainable face recognition.
Findings
New attention algorithms outperform existing methods
Benchmark dataset enables standardized evaluation
Qualitative visualizations demonstrate improved transparency
Abstract
Explainable face recognition is the problem of explaining why a facial matcher matches faces. In this paper, we provide the first comprehensive benchmark and baseline evaluation for explainable face recognition. We define a new evaluation protocol called the ``inpainting game'', which is a curated set of 3648 triplets (probe, mate, nonmate) of 95 subjects, which differ by synthetically inpainting a chosen facial characteristic like the nose, eyebrows or mouth creating an inpainted nonmate. An explainable face matcher is tasked with generating a network attention map which best explains which regions in a probe image match with a mated image, and not with an inpainted nonmate for each triplet. This provides ground truth for quantifying what image regions contribute to face matching. Furthermore, we provide a comprehensive benchmark on this dataset comparing five state of the art methods…
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