Visual salience guided feature-aware shape simplification

Yonglu Miao, Feixia Hu, Minyan Chen, Zhen Liu, Hua-hao Shou
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引用次数: 3

Abstract

In the area of 3D digital engineering and 3D digital geometry processing, shape simplification is an important task to reduce their requirement of large memory and high time complexity. By incorporating the content-aware visual salience measure of a polygonal mesh into simplification operation, a novel feature-aware shape simplification approach is presented in this paper. Owing to the robust extraction of relief heights on 3D highly detailed meshes, our visual salience measure is defined by a center-surround operator on Gaussian-weighted relief heights in a scale-dependent manner. Guided by our visual salience map, the feature-aware shape simplification algorithm can be performed by weighting the high-dimensional feature space quadric error metric of vertex pair contractions with the weight map derived from our visual salience map. The weighted quadric error metric is calculated in a six-dimensional feature space by combining the position and normal information of mesh vertices. Experimental results demonstrate that our visual salience guided shape simplification scheme can adaptively and effectively re-sample the underlying models in a feature-aware manner, which can account for the visually salient features of the complex shapes and thus yield better visual fidelity.
视觉显著性引导特征感知形状简化
在三维数字工程和三维数字几何处理领域,形状简化是降低其对大存储和高时间复杂度要求的一项重要任务。将多边形网格的内容感知视觉显著性测度引入到简化操作中,提出了一种新的特征感知形状简化方法。由于在3D高度详细的网格上提取浮雕高度的鲁棒性,我们的视觉显著性度量是由高斯加权浮雕高度的中心环绕算子以比例相关的方式定义的。在视觉显著性图的指导下,通过对顶点对收缩的高维特征空间二次误差度量与视觉显著性图的权重图进行加权,实现特征感知形状简化算法。结合网格顶点的位置和法线信息,在六维特征空间中计算加权二次误差度量。实验结果表明,基于视觉显著性的形状简化方案能够以特征感知的方式自适应、有效地对底层模型进行重采样,能够解释复杂形状的视觉显著性特征,从而获得更好的视觉保真度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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