Confidence-Calibrated Face and Kinship Verification
Min Xu, Ximiao Zhang, Xiuzhuang Zhou

TL;DR
This paper introduces a confidence calibration method for face and kinship verification that improves reliability without sacrificing accuracy, enhancing trustworthiness in high-stakes applications.
Contribution
We propose Angular Scaling Calibration (ASC), a simple, model-agnostic approach for confidence calibration in face and kinship verification, including uncertainty estimation for noisy data.
Findings
ASC improves confidence calibration across datasets.
The method maintains verification accuracy.
Enhanced trustworthiness in verification results.
Abstract
In this paper, we investigate the problem of prediction confidence in face and kinship verification. Most existing face and kinship verification methods focus on accuracy performance while ignoring confidence estimation for their prediction results. However, confidence estimation is essential for modeling reliability and trustworthiness in such high-risk tasks. To address this, we introduce an effective confidence measure that allows verification models to convert a similarity score into a confidence score for any given face pair. We further propose a confidence-calibrated approach, termed Angular Scaling Calibration (ASC). ASC is easy to implement and can be readily applied to existing verification models without model modifications, yielding accuracy-preserving and confidence-calibrated probabilistic verification models. In addition, we introduce the uncertainty in the calibrated…
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Taxonomy
TopicsFace recognition and analysis · Domain Adaptation and Few-Shot Learning · Generative Adversarial Networks and Image Synthesis
