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Generating Synthetic Space Allocation Probability Layouts Based on Trained Conditional-GANs

机译:基于训练有条件GAN的综合空间分配概率布局生成

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摘要

In this paper, a data-driven generative method is applied to generate synthetic space allocation probability layout. This generated layout could be helpful in the early stage of an architectural design. For this task, a specific training dataset is generated which is used to train the cGAN model. The training dataset consists of 300 existing apartment layouts which are coloured in a set of low feature representation. The cGAN model is trained with this dataset and the trained model is evaluated based on the quality of its generated layouts regarding the five pre-defined topological and geometrical benchmarks.
机译:本文采用一种数据驱动的生成方法来生成综合空间分配概率布局。这种生成的布局在建筑设计的早期阶段可能会有所帮助。为此,将生成一个特定的训练数据集,用于训练cGAN模型。训练数据集包含300种现有的公寓布局,并以一组低特征表示形式进行着色。使用该数据集对cGAN模型进行训练,并根据有关五个预定义的拓扑和几何基准的生成布局的质量来评估训练后的模型。

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