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arxiv:2604.05039

ID-Sim: An Identity-Focused Similarity Metric

Published on Apr 6
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Abstract

A new feed-forward metric called ID-Sim is proposed to evaluate identity-focused tasks in vision models by reflecting human selective sensitivity through diverse real-world and synthetic data.

AI-generated summary

Humans have remarkable selective sensitivity to identities -- easily distinguishing between highly similar identities, even across significantly different contexts such as diverse viewpoints or lighting. Vision models have struggled to match this capability, and progress toward identity-focused tasks such as personalized image generation is slowed by a lack of identity-focused evaluation metrics. To help facilitate progress, we propose ID-Sim, a feed-forward metric designed to faithfully reflect human selective sensitivity. To build ID-Sim, we curate a high-quality training set of images spanning diverse real-world domains, augmented with generative synthetic data that provides controlled, fine-grained identity and contextual variations. We evaluate our metric on a new unified evaluation benchmark for assessing consistency with human annotations across identity-focused recognition, retrieval, and generative tasks.

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