Co-locating style-defining elements on 3D shapes

Ruizhen Hu, Wenchao Li, O. V. Kaick, Hui Huang, Melinos Averkiou, D. Cohen-Or, Hao Zhang
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引用次数: 35

Abstract

We introduce a method for co-locating style-defining elements over a set of 3D shapes. Our goal is to translate high-level style descriptions, such as “Ming” or “European” for furniture models, into explicit and localized regions over the geometric models that characterize each style. For each style, the set of style-defining elements is defined as the union of all the elements that are able to discriminate the style. Another property of the style-defining elements is that they are frequently occurring, reflecting shape characteristics that appear across multiple shapes of the same style. Given an input set of 3D shapes spanning multiple categories and styles, where the shapes are grouped according to their style labels, we perform a cross-category co-analysis of the shape set to learn and spatially locate a set of defining elements for each style. This is accomplished by first sampling a large number of candidate geometric elements and then iteratively applying feature selection to the candidates, to extract style-discriminating elements until no additional elements can be found. Thus, for each style label, we obtain sets of discriminative elements that together form the superset of defining elements for the style. We demonstrate that the co-location of style-defining elements allows us to solve problems such as style classification, and enables a variety of applications such as style-revealing view selection, style-aware sampling, and style-driven modeling for 3D shapes.
在3D形状上共同定位样式定义元素
我们介绍了一种在一组3D形状上共同定位样式定义元素的方法。我们的目标是将高级风格描述,例如家具模型的“明”或“欧洲”,翻译成具有每种风格特征的几何模型上的明确和局部区域。对于每种样式,样式定义元素集被定义为能够区分该样式的所有元素的联合。样式定义元素的另一个属性是它们经常出现,反映了在相同样式的多个形状中出现的形状特征。给定一个跨越多个类别和样式的3D形状输入集,其中形状根据其样式标签分组,我们执行形状集的跨类别联合分析,以学习和空间定位每种样式的一组定义元素。这是通过首先对大量候选几何元素进行采样,然后对候选元素迭代地应用特征选择来实现的,以提取风格区分元素,直到找不到其他元素为止。因此,对于每个样式标签,我们获得一组判别性元素,这些元素共同构成样式定义元素的超集。我们演示了样式定义元素的协同位置允许我们解决诸如样式分类之类的问题,并支持各种应用程序,例如样式显示视图选择、样式感知采样和3D形状的样式驱动建模。
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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