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LocalScore: Local Density-Aware Similarity Scoring for Biometrics

About

Open-set biometrics faces challenges with probe subjects who may not be enrolled in the gallery, as traditional biometric systems struggle to detect these non-mated probes. Despite the growing prevalence of multi-sample galleries in real-world deployments, most existing methods collapse intra-subject variability into a single global representation, leading to suboptimal decision boundaries and poor open-set robustness. To address this issue, we propose LocalScore, a simple yet effective scoring algorithm that explicitly incorporates the local density of the gallery feature distribution using the k-th nearest neighbors. LocalScore is architecture-agnostic, loss-independent, and incurs negligible computational overhead, making it a plug-and-play solution for existing biometric systems. Extensive experiments across multiple modalities demonstrate that LocalScore consistently achieves substantial gains in open-set retrieval (FNIR@FPIR reduced from 53% to 40%) and verification (TAR@FAR improved from 51% to 74%). We further provide theoretical analysis and empirical validation explaining when and why the method achieves the most significant gains based on dataset characteristics.

Yiyang Su, Minchul Kim, Jie Zhu, Christopher Perry, Feng Liu, Anil Jain, Xiaoming Liu• 2026

Related benchmarks

TaskDatasetResultRank
Person Re-IdentificationCCVID--
13
Face RecognitionCCVID
FNIR@FPIR10.67
2
Face RecognitionBRIAR
FNIR @ FPIR92.9
2
Gait RecognitionCCVID
FNIR@FPIR59.92
2
Gait RecognitionBRIAR
FNIR@FPIR84
2
Person Re-IdentificationBRIAR
FNIR@FPIR86.8
2
Whole Body RecognitionCCVID
FNIR@FPIR10.74
2
Whole Body RecognitionBRIAR
FNIR @ FPIR73.4
2
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