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Inverse Procedural Modeling of Branching Structures by Inferring L-Systems

机译:推断L-Systems的分支结构逆程序建模

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摘要

We introduce an inverse procedural modeling approach that learns L-system representations of pixel images with branching structures. Our fully automatic model generates a compact set of textual rewriting rules that describe the input. We use deep learning to discover atomic structures such as line segments or branchings. Orientation and scaling of these structures are determined and the detected structures are combined into a tree. The initial representation is analyzed, and repeating parts are encoded into a small grammar by using greedy optimization while the user can control the size of the detected rules. The output is an L-system that represents the input image as a simple text and a set of terminal symbols. We apply our approach to a variety of examples, demonstrate its robustness against noise and blur, and we show that it can detect user sketches and complex input structures.
机译:我们介绍了一种逆程序建模方法,该方法学习具有分支结构的像素图像的L-System表示。我们的全自动模型生成一组紧凑的文本重写规则,描述了输入。我们使用深度学习来发现诸如线段或分支等原子结构。确定这些结构的取向和缩放,并且检测到的结构组合成树。分析初始表示,并且在用户可以控制检测到的规则的大小时,通过使用贪婪优化将重复部分编码为小语法。输出是一个L-System,它表示输入图像作为简单文本和一组终端符号。我们将我们的方法应用于各种示例,展示其对噪声和模糊的稳健性,并且我们表明它可以检测用户草图和复杂的输入结构。

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