Yesnt: Are Diffusion Relighting Models Ready for Capture Stage Compositing? A Hybrid Alternative to Bridge the Gap

arXiv — cs.CVTuesday, October 28, 2025 at 4:00:00 AM
Yesnt's new research explores the potential of diffusion relighting models for enhancing volumetric video capture, addressing the challenges of stability and quality in virtual environments. This hybrid framework aims to improve the integration of captured performances into digital worlds, making it a significant step forward in the field of video technology. As the demand for high-quality virtual experiences grows, advancements like these could revolutionize how we create and interact with digital content.
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