Reference-Free Image Quality Assessment for Virtual Try-On via Human Feedback
arXiv cs.CV / 3/16/2026
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Key Points
- Proposes VTON-IQA, a reference-free image quality assessment framework for virtual try-on that does not require ground-truth images.
- Builds VTON-QBench, a large-scale, human-annotated benchmark with 62,688 try-on images and 431,800 quality annotations from 13,838 annotators, the largest to date for this task.
- Introduces an Interleaved Cross-Attention module that enhances transformer blocks with a cross-attention layer between self-attention and MLP to jointly model garment fidelity and person-specific detail.
- Demonstrates that VTON-IQA produces human-aligned image quality predictions and provides a comprehensive benchmark of 14 representative VTON models.
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