Occlusion-robust Stylization for Drawing-based 3D Animation
Sunjae Yoon, Gwanhyeong Koo, Younghwan Lee, Ji Woo Hong, Chang D. Yoo

TL;DR
This paper introduces an occlusion-robust stylization framework for drawing-based 3D animation that maintains style quality under occlusions, improves inference speed, and reduces memory usage.
Contribution
The proposed OSF provides occlusion-robust edge guidance using optical flow and operates in a single run, enhancing style preservation and efficiency.
Findings
Maintains stylization quality under occlusions
Achieves 2.4x faster inference
Uses 2.1x less memory
Abstract
3D animation aims to generate a 3D animated video from an input image and a target 3D motion sequence. Recent advances in image-to-3D models enable the creation of animations directly from user-hand drawings. Distinguished from conventional 3D animation, drawing-based 3D animation is crucial to preserve artist's unique style properties, such as rough contours and distinct stroke patterns. However, recent methods still exhibit quality deterioration in style properties, especially under occlusions caused by overlapping body parts, leading to contour flickering and stroke blurring. This occurs due to a `stylization pose gap' between training and inference in stylization networks designed to preserve drawing styles in drawing-based 3D animation systems. The stylization pose gap denotes that input target poses used to train the stylization network are always in occlusion-free poses, while…
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Taxonomy
TopicsComputer Graphics and Visualization Techniques · Human Motion and Animation · Generative Adversarial Networks and Image Synthesis
