CVMay 8

Head Similarity: Modeling Structured Whole-Head Appearance Beyond Face Recognition

arXiv:2605.0776631.4
Predicted impact top 76% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For vision applications requiring identity consistency under non-frontal views or missing facial cues, this work addresses the limitation of face recognition models that collapse appearance variations.

The paper introduces Head Similarity, a new formulation for structured whole-head appearance modeling beyond face recognition, and demonstrates that conventional face recognition models fail to capture appearance-dependent similarity, while their approach shows feasibility.

Many vision applications require identity consistency beyond strict biometric recognition, especially under non-frontal views or when facial cues are missing. However, conventional face recognition models enforce intra-identity invariance, collapsing appearance variations such as hairstyle or styling changes into a single representation, limiting their use in appearance-sensitive scenarios. To address this limitation, we introduce Head Similarity, a new formulation that extends identity-centric recognition to structured whole-head similarity modeling. Our approach explicitly captures intra-identity appearance variation and enforces hierarchical similarity ordering across identity and appearance states, enabling meaningful comparison even under occlusion or rear-view conditions. We construct a large-scale benchmark from long-form videos with weakly-supervised appearance states, covering diverse poses, occlusions, and temporal changes. As a first step, we develop a simple yet effective framework that jointly models identity discrimination and appearance-sensitive similarity through hierarchical supervision and identity-aware distillation. Experiments show that conventional face recognition models fail to capture appearance-dependent similarity, while our approach demonstrates the feasibility of structured whole-head similarity modeling.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes