by Sarah Frigg | Jul 24, 2022 | Capture, Machine Learning, VFX
Local Anatomically – Constrained Facial Performance Retargeting We present a new method for high-fidelity offline facial performance retargeting that is neither expensive nor artifact-prone. July 24, 2022ACM SIGGRAPH 2022 Authors Prashanth Chandran...
by Sarah Frigg | Jul 24, 2022 | Capture, Machine Learning, VFX
MoRF: Morphable Radiance Fields for Multiview Neural Head Modeling We demonstrate how MoRF is a strong new step towards 3D morphable neural head modeling. July 24, 2022ACM SIGGRAPH 2022 Authors Daoye Wang (ETH Zürich) Prashanth Chandran...
by Martina Megaro | Jul 24, 2022 | Capture, Machine Learning, VFX
Facial Hair Tracking for High Fidelity Performance Capture We demonstrate the proposed capture pipeline on a variety of different facial hair styles and lengths, ranging from sparse and short to dense full-beards. July 24, 2022ACM SIGGRAPH 2022 Authors...
by Sarah Frigg | Jul 24, 2022 | Capture, Machine Learning, VFX
Implicit Neural Representation for Physics-driven Actuated Soft Bodies We apply the method to volumetric soft bodies, human poses, and facial expressions, demonstrating artist-friendly properties. July 24, 2022ACM SIGGRAPH 2022 Authors Lingchen Yang (ETH...
by Martina Megaro | Apr 25, 2022 | Capture, Machine Learning, VFX
Shape Transformers: Topology-Independent 3D Shape Models Using Transformers We present a new nonlinear parametric 3D shape model based on transformer architectures. April 25, 2022Eurographics 2022 Authors Prashanth Chandran (DisneyResearch|Studios/ETH Joint...
by Martina Megaro | Apr 25, 2022 | Capture, Machine Learning, VFX
Improved Lighting Models for Facial Appearance Capture We compare the results obtained with a state-of-the-art appearance capture method [RGB∗20], with and without our proposed improvements to the lighting model. April 25, 2022Eurographics 2022 Authors...