从单张非正面人脸图像重建三维人脸

N. Nozawa, Daiki Kuwahara, S. Morishima
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引用次数: 1

摘要

从单个图像中重建人脸形状是刑事调查的一个重要主题,例如从只有几帧的监控摄像机中识别嫌疑人。然而,从非正面脸图像中恢复脸型仍然很困难。在人脸上使用阴影线索的方法取决于光照环境,不能适用于出现阴影的图像,例如[Kemelmacher et al. 2011]。另一方面[Blanz et al. 2004]仅使用面部特征点通过3D变形模型(3D Morphable Model, 3DMM)重建形状。然而,该方法需要模型中顶点与输入图像特征点的位姿对应,因为当面部方向不是正面时,无法看到面部轮廓。本文提出了一种仅使用单个通用对应表就能从非正面人脸图像中重建人脸形状的方法。该方法在迭代重建过程中搜索面部轮廓上点的对应关系,使重建过程简单稳定。
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3D face reconstruction from a single non-frontal face image
A reconstruction of a human face shape from a single image is an important theme for criminal investigation such as recognition of suspected people from surveillance cameras with only a few frames. It is, however, still difficult to recover a face shape from a non-frontal face image. Method using shading cues on a face depends on the lighting circumstance and cannot be adapted to images in which shadows occurs, for example [Kemelmacher et al. 2011]. On the other hand, [Blanz et al. 2004] reconstructed a shape by 3D Morphable Model (3DMM) only with facial feature points. This method, however, requires the pose-wise correspondences of vertices in the model to feature points of input image because a face contour cannot be seen when the facial direction is not the front. In this paper, we propose a method which can reconstruct a facial shape from a non-frontal face image only with a single general correspondence table. Our method searches for the correspondences of points on a facial contour in the iterative reconstruction process, and makes the reconstruction simple and stable.
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