AI RESEARCH
Toward Real-World Adoption of Portrait Relighting via Hybrid Domain Knowledge Fusion
arXiv CS.LG
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ArXi:2604.23094v1 Announce Type: cross The real-world adoption of portrait relighting is hindered by dataset domain gaps, camera sensitivity, and computational costs. We address these challenges with Hybrid Domain Knowledge Fusion, a paradigm that fuses the specialized strengths of synthetic, One-Light-at-A-Time (OLAT), and real-world datasets into a compact model. Our approach features specialized prior models hardened by domain-aware adaptation, followed by augmented knowledge distillation into a lightweight student model with multi-domain expertise.