Reconstruction of 3D facial image using a single 2D image

H. Afzal, S. Luo, Muhammad Kamran Afzal
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引用次数: 1

Abstract

In many scenarios related to image processing, 3D face reconstruction is considered an essential part. A robust and fast method of 3D face reconstruction from a single 2D image is presented. This method consists of three main steps including extraction of features from single image, calculating the depth of image and adjustment of a 3D model on the direction of Z-axis. In the first step, the features of image are extracted by using supervised descent method (SDM). Using SDM, face regions like facial components (eyes, nose lips) and face contours are detected. Second step consists of depth prediction by implementation of multivariate Gaussian distribution. Finally, 3D face is constructed with the help of features and the depth information and 3D database. The proposed method has been verified by conducting several experiments depicted in evaluation section. Our method is robust in nature and gives good results even using a single image, comparing to other methods that use multiple images for reconstruction of 3D images.
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使用单个二维图像重建三维面部图像
在许多与图像处理相关的场景中,三维人脸重建被认为是必不可少的一部分。提出了一种基于单幅二维图像的快速、鲁棒的三维人脸重建方法。该方法包括单幅图像特征提取、图像深度计算和三维模型在z轴方向上的调整三个主要步骤。首先,采用监督下降法(SDM)提取图像特征;使用SDM,人脸区域,如面部成分(眼睛、鼻子、嘴唇)和面部轮廓被检测出来。第二步是通过实现多元高斯分布进行深度预测。最后,利用特征信息、深度信息和三维数据库构建三维人脸。本文所提出的方法已通过评价部分所描述的几个实验得到验证。与使用多个图像重建3D图像的其他方法相比,我们的方法本质上是鲁棒的,即使使用单个图像也能给出良好的结果。
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