Inferring topological operations on generalized maps: Application to subdivision schemes

Romain Pascual , Hakim Belhaouari , Agnès Arnould , Pascale Le Gall
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Abstract

The design of correct topological modeling operations is known to be a time-consuming and challenging task. However, these operations are intuitively understood via simple drawings of a representative object before and after modification. We propose to infer topological modeling operations from an application example. Our algorithm exploits a compact and expressive graph-based language. In this framework, topological modeling operations on generalized maps are represented as rules from the theory of graph transformations. Most of the time, operations are generic up to a topological cell (vertex, face, volume). Thus, the rules are parameterized with orbit types indicating which kind of cell is involved. Our main idea is to infer a generic rule by folding a graph comprising a copy of the object before modification, a copy after modification, and information about the modification. We fold this graph according to the cell parametrization of the operation under design. We illustrate our approach with some subdivision schemes because their symmetry simplifies the operation inference.

Abstract Image

广义映射上的推断拓扑运算:在细分方案中的应用
设计正确的拓扑建模操作是一项耗时且具有挑战性的任务。然而,这些操作是通过一个代表性对象修改前后的简单绘图直观地理解的。我们建议从一个应用实例中推断拓扑建模操作。我们的算法利用了一种紧凑而富有表现力的基于图形的语言。在这个框架中,广义映射上的拓扑建模操作被表示为图变换理论中的规则。大多数情况下,操作都是通用的,直到拓扑单元(顶点、面、体积)。因此,规则被参数化为轨道类型,指示涉及哪种类型的单元。我们的主要思想是通过折叠一个包含修改前对象副本、修改后副本和修改信息的图来推断一个通用规则。我们根据设计操作的单元参数化折叠这张图。我们用一些细分方案来说明我们的方法,因为它们的对称性简化了运算推理。
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