EMS:通过单视角图像进行三维眉毛建模

Chenghong Li, Leyang Jin, Yujian Zheng, Yizhou Yu, Xiaoguang Han
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引用次数: 0

摘要

眉毛在面部表情和外观中起着至关重要的作用。虽然人脸的三维数字化已经得到了充分的探索,但对三维眉毛建模的关注却较少。在这项工作中,我们提出了首个基于学习的单视角三维眉毛重建框架 EMS。按照头皮毛发重建的方法,我们也将眉毛表示为一组纤维曲线,并将重建转换为纤维生长问题。然后,我们精心设计了三个模块:RootFinder 首先定位纤维根部的位置,指明纤维生长的方向;OriPredictor 预测三维空间中的方向场,引导纤维生长;FiberEnder 用于确定何时停止每根纤维的生长。我们的 OriPredictor 直接借鉴了头发重建中使用的方法。考虑到头发和眉毛的不同,RootFinder 和 FiberEnder 都是新提出的。具体来说,为了应对根部位置被严重遮挡的挑战,我们将根部定位制定为一项密度图估算任务。根据预测的密度图,我们进一步使用基于密度的聚类方法来寻找根。对于每根纤维,生长都从根点开始,一步一步移动,直到终点,其中每一步都根据预测的方向场定义为长度恒定的定向线段。为了确定何时结束,设计了一个像素对齐的 RNN 架构,以形成一个二元分类器,输出每个生长步骤是否停止的结果。为了支持所有建议网络的训练,我们建立了首个三维合成眉毛数据集,其中包含 400 个由艺术家手动创建的高质量眉毛模型。广泛的实验证明了所提出的 EMS 管道在各种不同的眉毛样式和长度(从短而稀疏的眉毛到长而浓密的眉毛)上的有效性。
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EMS: 3D Eyebrow Modeling from Single-View Images
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 indicate 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 directly borrows the method used in hair reconstruction. Considering the differences between hair and eyebrows, both RootFinder and FiberEnder are newly proposed. Specifically, to cope with the challenge that the root location is severely occluded, we formulate root localization as a density map estimation task. Given the predicted density map, a density-based clustering method is further used for finding the roots. For each fiber, the growth starts from the root point and moves step by step until the ending, where each step is defined as an oriented line segment with a constant length according to the predicted orientation field. To determine when to end, a pixel-aligned RNN architecture is designed to form a binary classifier, which outputs stop or not for each growing step. To support the training of all proposed networks, we build the first 3D synthetic eyebrow dataset that contains 400 high-quality eyebrow models manually created by artists. Extensive experiments have demonstrated the effectiveness of the proposed EMS pipeline on a variety of different eyebrow styles and lengths, ranging from short and sparse to long bushy eyebrows.
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