Bio

I am Yunhong Min, an M.S. student in the KAIST Visual AI Group, led by Prof. Minhyuk Sung.

My research interests are in diffusion- and flow-based generative models, with a focus on developing a general generative framework leveraging powerful generative priors. Recently, I have been exploring how to effectively incorporate external guidance during sampling to improve generation quality without requiring additional training.

For details, refer to my Curriculum Vitae (CV).

News

Publications

MatLat Thumbnail
MatLat: Material Latent Space for PBR Texture Generation
arXiv 2025
BézierFlow Thumbnail
BézierFlow: Bézier Stochastic Interpolant Schedulers for Few-Step Generation
Yunhong Min*, Juil Koo*, Seungwoo Yoo, Minhyuk Sung (*Equal contribution.)
arXiv 2025
Psi-Sampler Thumbnail
Ψ-Sampler: Initial Particle Sampling for SMC-Based Inference-Time Reward Alignment in Score Models
Taehoon Yoon*, Yunhong Min*, Kyeongmin Yeo*, Minhyuk Sung (*Equal contribution.)
NeurIPS 2025 (Spotlight)
ORIGEN Thumbnail
ORIGEN: Zero-Shot 3D Orientation Grounding in Text-to-Image Generation
Yunhong Min*, Daehyeon Choi*, Kyeongmin Yeo, Jihyun Lee, Minhyuk Sung (*Equal contribution.)
NeurIPS 2025
DAFT-GAN Thumbnail
DAFT-GAN: Dual Affine Transformation Generative Adversarial Network for Text-Guided Image Inpainting
Jihoon Lee*, Yunhong Min*, Hwidong Kim*, Sangtae Ahn (*Equal contribution.)
ACM MM 2024

Academic Service

Conference Reviewer

  • ICLR 2026