评估几何伪影的局部可见性

Jinjiang Guo, V. Vidal, A. Baskurt, G. Lavoué
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引用次数: 14

摘要

已经引入了几个基于感知的质量指标来预测几何伪影对3D模型视觉外观的整体影响。他们通常会得出一个单一的分数,反映出由扭曲引起的全球烦恼程度。然而,除了这个全局信息之外,在许多应用中获得关于工件的局部可见性的信息(即估计局部失真度量)也很重要。在这项工作中,我们提出了一个心理物理实验,观察者被要求标记3D网格中包含明显扭曲的区域。收集到的逐顶点失真图首先用于说明人类视觉系统的几种感知机制。然后,它们作为基础事实来评估众所周知的几何属性和用于预测工件可见性的度量的性能。结果表明,基于曲率的属性具有良好的性能。正如预期的那样,豪斯多夫距离是感知到的局部失真的一个很差的预测器,而最近基于感知的指标提供了最好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the local visibility of geometric artifacts
Several perceptually-based quality metrics have been introduced to predict the global impact of geometric artifacts on the visual appearance of a 3D model. They usually produce a single score that reflects the global level of annoyance caused by the distortions. However, beside this global information, it is also important in many applications to obtain information about the local visibility of the artifacts (i.e. estimating a localized distortion measure). In this work we present a psychophysical experiment where observers are asked to mark areas of 3D meshes that contain noticeable distortions. The collected per-vertex distortion maps are first used to illustrate several perceptual mechanisms of the human visual system. They then serve as ground-truth to evaluate the performance of well-known geometric attributes and metrics for predicting the visibility of artifacts. Results show that curvature-based attributes demonstrate excellent performance. As expected, the Hausdorff distance is a poor predictor of the perceived local distortion while the recent perceptually-based metrics provide the best results.
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