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Face Transformation With Harmonic Models by the Finite-Volume Method With Delaunay Triangulation

机译:带有Delaunay三角剖分的有限体积方法的谐波模型人脸转换

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To carry out face transformation, this paper presents new numerical algorithms, which consist of two parts, namely, the harmonic models for changes of face characteristics and the splitting techniques for grayness transition. The main method in this paper is a combination of the finite-volume method (FVM) with Delaunay triangulation to solve the Laplace equations in the harmonic transformation of face images. The advantages of the FVM with Delaunay triangulation are given as follows: 1) easy to formulate the linear algebraic equations; 2) good in retaining the pertinent geometric and physical need; and 3) less central processing unit time needed. Numerical and graphical experiments have been conducted for the face transformation from a female (woman) to a male (man), and vice versa. The computed sequential errors are $O(N^{-(3/2)})$, where $N^{2}$ is the division number of a pixel into subpixels. These computed errors coincide with the analysis on the splitting–shooting method (SSM) with piecewise constant interpolation in the previous paper of Li and Bai. In computation, the average absolute errors of restored pixel grayness can be smaller than 2 out of 256 grayness levels. The FVM is as simple as the finite-difference method (FDM) and as flexible as the finite-element method (FEM). Hence, the FVM is particularly useful when dealing with large face images with a huge number of pixels in shape distortion. The numerical transformation of face images in this paper can be used not only in pattern recognition but also in resampling, image morphing, and computer animation.
机译:为了进行人脸转换,本文提出了新的数值算法,该算法包括两部分,即用于改变人脸特征的谐波模型和用于灰度过渡的分裂技术。本文的主要方法是将有限体积法(FVM)与Delaunay三角剖分相结合,以解决人脸图像谐波变换中的Laplace方程。具有Delaunay三角剖分的FVM的优点如下:1)易于公式化线性代数方程; 2)善于保留相关的几何和物理需求; 3)所需的中央处理单元时间更少。从女性(女性)到男性(男性)的面部转换已经进行了数值和图形实验,反之亦然。计算的顺序误差为$ O(N ^ {-(3/2)})$,其中$ N ^ {2} $是像素划分为子像素的数量。这些计算出的误差与Li和Bai先前论文中采用分段常数插值法的分割射击方法(SSM)的分析相吻合。在计算中,恢复的像素灰度的平均绝对误差可以小于256个灰度等级中的2个。 FVM与有限差分法(FDM)一样简单,而与有限元方法(FEM)一样灵活。因此,当处理形状畸变中具有大量像素的大型面部图像时,FVM特别有用。本文中人脸图像的数值变换不仅可以用于模式识别,还可以用于重采样,图像变形和计算机动画。

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