Pixel Cube: Diffusion-based Portrait Video Relighting Through Realistic Lighting Reproduction 文章

ArXiv CS.CV2026-06-03NEWSen作者: Yufan Zhang, Yu Ji, Ayo Ajiboye, Rundi Wu, Yu Guo, Changxi Zheng, Jinwei Ye

摘要

arXiv:2606.02919v1 Announce Type: new Abstract: We present a diffusion-based method for relighting dynamic portrait videos with photorealism and temporal consistency. Our method is fueled by a hybrid training dataset that consists of real-captured and rendered dynamic portrait videos with diverse subject appearances, facial motions, head poses, and known lighting conditions. Specifically, we construct an LED-based lighting system for realistic lighting emulation and high-speed video relighting data acquisition. By leveraging the image priors embedded in pre-trained video diffusion models, and using per-frame high dynamic range (HDR) environment map as lighting control, we train a high-performance generative model for realistic and identity-preserving dynamic portrait video relighting. In addition to the environment map control, our model uses a synthesized background image to enable control on the camera's exposure level and color tone.

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