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An improved error-diffusion approach for generating mesh models of images

机译:用于生成图像网格模型的改进的误差扩散方法

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In earlier work, Yang et al. proposed a highly-effective technique for generating triangle-mesh models of images, known as the error diffusion (ED) method. Unfortunately, the ED method, which chooses triangulation connectivity via a Delaunay triangulation, typically yields triangulations in which many triangulation edges crosscut image edges, leading to increased approximation error. In this paper, we propose a computational framework for mesh generation that modifies the ED method to use data-dependent triangulations (DDTs) in conjunction with the Lawson local optimization procedure (LOP) and has several free parameters. Based on experimentation, we recommend two particular choices for these parameters, yielding two specific mesh-generation methods, known as MED1 and MED2, which make different tradeoffs between approximation quality and computational cost. Through the use of DDTs and the LOP, triangulation connectivity can be chosen optimally so as to minimize approximation error. As part of our work, two novel optimality criteria for the LOP are proposed, both of which are shown to outperform other well known criteria from the literature. Through experimental results, our MED1 and MED2 methods are shown to yield image approximations of substantially higher quality than those obtained with the ED method, at a relatively modest computational cost.
机译:在早期的工作中,Yang等。提出了一种用于生成图像的三角形网格模型的高效技术,称为误差扩散(ED)方法。不幸的是,ED方法通过Delaunay三角剖分选择三角剖分连通性,通常会产生三角剖分,其中许多三角剖分边缘与图像边缘相交,导致近似误差增加。在本文中,我们提出了一种用于网格生成的计算框架,该框架将ED方法修改为与Lawson局部优化过程(LOP)结合使用数据依赖的三角剖分(DDT),并具有多个自由参数。基于实验,我们建议为这些参数选择两个特定的选择,从而产生两种特定的网格生成方法,称为MED1和MED2,它们在近似质量和计算成本之间进行了折衷。通过使用DDT和LOP,可以最佳地选择三角连接,以使近似误差最小。作为我们工作的一部分,提出了两个新的LOP最优标准,它们均优于文献中其他众所周知的标准。通过实验结果,我们的MED1和MED2方法显示出的图像逼近质量比用ED方法获得的图像逼近质量高得多,而计算成本却相对较低。

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