EMS: 3D Eyebrow Modeling from Single-view Images
Chenghong Li, Leyang Jin, Yujian Zheng, Yizhou Yu, Xiaoguang Han

TL;DR
This paper introduces EMS, a novel learning-based framework for reconstructing 3D eyebrows from single-view images by modeling eyebrows as fiber curves and employing specialized modules for root localization, fiber growth, and termination.
Contribution
The work presents the first learning-based approach for single-view 3D eyebrow modeling, including new modules and a synthetic dataset for training and evaluation.
Findings
Effective reconstruction of diverse eyebrow styles
Robust root localization despite occlusion
Accurate fiber growth and termination predictions
Abstract
Eyebrows play a critical role in facial expression and appearance. Although the 3D digitization of faces is well explored, less attention has been drawn to 3D eyebrow modeling. In this work, we propose EMS, the first learning-based framework for single-view 3D eyebrow reconstruction. Following the methods of scalp hair reconstruction, we also represent the eyebrow as a set of fiber curves and convert the reconstruction to fibers growing problem. Three modules are then carefully designed: RootFinder firstly localizes the fiber root positions which indicates where to grow; OriPredictor predicts an orientation field in the 3D space to guide the growing of fibers; FiberEnder is designed to determine when to stop the growth of each fiber. Our OriPredictor is directly borrowing the method used in hair reconstruction. Considering the differences between hair and eyebrows, both RootFinder and…
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Taxonomy
TopicsFacial Rejuvenation and Surgery Techniques · Face recognition and analysis · Facial Nerve Paralysis Treatment and Research
