Bilkent University
Department of Computer Engineering
CS 590/690 SEMINAR

 

StyleFusion360: View-Consistent Head Stylization via Adaptive Style Modulation

 

Furkan Güzelant
Master Student
(Supervisor:Asst.Prof.Ayşegül Dündar Boral)

Computer Engineering Department
Bilkent University

Abstract: 3D head stylization enables expressive reimagining of human faces for creative visual experiences in digital media. Existing 3D-aware methods often require computationally intensive optimization or per-style fine-tuning, limiting flexibility and user control. To overcome these challenges, we introduce StyleFusion360, a diffusion-based framework for multi-view consistent, identity-preserving 3D head stylization from a single style reference image, without per-style training. Our approach enhances the Style Fusion Attention mechanism with a style-conditioned key modulation mechanism that aligns content and style representations for fine-grained and controllable stylization. We further provide a user-controllable slider for adjusting stylization intensity. In addition, StyleFusion360 supports local multi-edit stylization, enabling targeted edits such as modifying hair or eyes independently. Extensive experiments on FFHQ and RenderMe360 demonstrate that StyleFusion360 produces high-quality, controllable, and visually compelling stylizations, outperforming state-of-the-art GAN- and diffusion-based methods across diverse style domains.

 

DATE: March 23, Monday @ 16:50 Place: EA 502