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arxiv: 2606.04469 · v1 · pith:QTVZZ6PTnew · submitted 2026-06-03 · 💻 cs.CV · cs.AI

Adaptive Calibration for Fair and Performant Facial Recognition

classification 💻 cs.CV cs.AI
keywords calibrationadaptivefacialperformancerecognitionapproachcosinedemographic
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We introduce Adaptive Calibration (AC), a novel calibration strategy for facial recognition that maps cosine similarity between normalized embeddings to well-calibrated probabilities. By incorporating local context into calibration, Adaptive Calibration corrects for a fundamental mismatch in cosine similarity, whereby the same distance can correspond to different match probabilities in different embedding regions. Our approach improves both overall performance and results in a fairer calibration without requiring demographic metadata. Our approach consistently dominates existing methods both on accuracy and fairness metrics across a variety of pretrained models and standard benchmarks. AC provides a practical solution for equitable facial recognition, without requiring demographic group annotations, and while improving overall performance. Unlike existing approaches, our method provides continuous, region-specific calibration that avoids "leveling down" where fairness comes at the cost of degraded performance for some groups.

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