中国古代建筑三维模型的文本转换

Yan Wang, Pu Ren, Mingquan Zhou, Wuyang Shui, Pengbo Zhou
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引用次数: 0

摘要

三维(3D)建模目前是一项创造性的任务,要求建模者具有较强的专业技能和背景知识,特别是在中国古建筑三维建模(CAA)领域。目前,对三维CAA建模的研究大多是基于硬编码的构造规则,需要完整、复杂和形式化的描述。我们提出了一个生成系统,弥合了中文文本和3D模型之间的差距,允许用户通过自然语言生成3D模型。首先,从现有CAA数据中学习贝叶斯网络来提供不同结构组件之间的关系。其次,通过对用户输入的中文文本进行解析,确定CAA的关键组件;和其他匹配的结构部件将通过推理训练好的贝叶斯网络来计算。第三,通过提出的布局优化算法实现各部件的综合。最后,我们评估了训练好的贝叶斯网络的有效性,并演示了该网络在中文文本快速生成三维CAA模型中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text to 3D Model of Chinese Ancient Architecture
Three-dimensional (3D) modeling is currently a creative task that requires modelers with strong professional skills and background knowledge, especially in the field of 3D modeling of Chinese ancient architecture (CAA). At present, most of the studies on 3D CAA modeling are based on hard-coded constructive rules, which need completed, complex and formalized descriptions. We present a generative system bridging the gap between the Chinese text and 3D models that allows users to generate 3D models by natural language. First, a Bayesian network is learned from existing CAA data to provide relationships of different structural components. Second, by parsing the Chinese text inputted by the user, key components of the CAA will be determined; and other matched structural components will be calculated by inferencing the trained Bayesian network. Third, the synthesis of all components is achieved by a proposed placement optimizing algorithm. Finally, we evaluate the effectiveness of the trained Bayesian network and demonstrate the application to generate 3D CAA model rapidly from the Chinese text.
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