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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >3D Face Reconstruction from a Single Image Using a Single Reference Face Shape
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3D Face Reconstruction from a Single Image Using a Single Reference Face Shape

机译:使用单个参考面部形状从单个图像重建3D面部

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摘要

Human faces are remarkably similar in global properties, including size, aspect ratio, and location of main features, but can vary considerably in details across individuals, gender, race, or due to facial expression. We propose a novel method for 3D shape recovery of faces that exploits the similarity of faces. Our method obtains as input a single image and uses a mere single 3D reference model of a different person''s face. Classical reconstruction methods from single images, i.e., shape-from-shading, require knowledge of the reflectance properties and lighting as well as depth values for boundary conditions. Recent methods circumvent these requirements by representing input faces as combinations (of hundreds) of stored 3D models. We propose instead to use the input image as a guide to "moldȁD; a single reference model to reach a reconstruction of the sought 3D shape. Our method assumes Lambertian reflectance and uses harmonic representations of lighting. It has been tested on images taken under controlled viewing conditions as well as on uncontrolled images downloaded from the Internet, demonstrating its accuracy and robustness under a variety of imaging conditions and overcoming significant differences in shape between the input and reference individuals including differences in facial expressions, gender, and race.
机译:人脸的整体属性非常相似,包括大小,长宽比和主要特征的位置,但由于个人,性别,种族或面部表情的不同,人脸的细节可能会有很大差异。我们提出了一种利用人脸相似性的人脸3D形状恢复的新方法。我们的方法获取单个图像作为输入,并使用不同人脸的单个3D参考模型。从单个图像(即阴影形状)的经典重建方法需要了解反射率属性和照明以及边界条件的深度值。最近的方法通过将输入面表示为存储的3D模型的(数百个)组合来规避这些要求。相反,我们建议使用输入图像作为“moldȁD的指南;单个参考模型以达到所需3D形状的重建。我们的方法假设使用朗伯反射率并使用照明的谐波表示。已经在受控条件下拍摄的图像上进行了测试。查看条件以及从Internet下载的不受控制的图像,证明了它在各种成像条件下的准确性和鲁棒性,并克服了输入和参考个体之间形状上的明显差异,包括面部表情,性别和种族的差异。

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