Flow-OPD applies on-policy distillation to Flow Matching models through specialized teachers, cold-start initialization, task routing, and manifold regularization, lifting GenEval from 63 to 92 and OCR from 59 to 94 on Stable Diffusion 3.5 Medium.
Dpok: Reinforcement learning for fine-tuning text-to-image diffusion models
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Presents Instant3D for rapid text/image-to-3D generation via multi-view diffusion plus feed-forward reconstruction, and FastMap for 10x faster structure-from-motion with comparable accuracy.
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Flow-OPD: On-Policy Distillation for Flow Matching Models
Flow-OPD applies on-policy distillation to Flow Matching models through specialized teachers, cold-start initialization, task routing, and manifold regularization, lifting GenEval from 63 to 92 and OCR from 59 to 94 on Stable Diffusion 3.5 Medium.
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Efficient 3D Content Reconstruction and Generation
Presents Instant3D for rapid text/image-to-3D generation via multi-view diffusion plus feed-forward reconstruction, and FastMap for 10x faster structure-from-motion with comparable accuracy.