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Learning Domain Knowledge for Facade Labelling

机译:学习门面标签领域知识

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This paper presents an approach to address the problem of image facade labelling. In the architectural literature, domain knowledge is usually expressed geometrically in the final design, so facade labelling should on the one hand conform to visual evidence, and on the other hand to the architectural principles - how individual assets (e.g. doors, windows) interact with each other to form a facade as a whole. To this end, we first propose a recursive splitting method to segment facades into a bunch of tiles for semantic recognition. The segmentation improves the processing speed, guides visual recognition on suitable scales and renders the extraction of architectural principles easy. Given a set of segmented training fagades with their label maps, we then identify a set of meta-features to capture both the visual evidence and the architectural principles. The features are used to train our facade labelling model. In the test stage, the features are extracted from segmented facades and the inferred label maps. The following three steps are iterated until the optimal labelling is reached: 1) proposing modifications to the current labelling; 2) extracting new features for the proposed labelling; 3) feeding the new features to the labelling model to decide whether to accept the modifications. In experiments, we evaluated our method on the ECP facade dataset and achieved higher precision than the state-of-the-art at both the pixel level and the structural level.
机译:本文提出了一种解决图像外观标记问题的方法。在建筑文献中,领域知识通常在最终设计中以几何形式表达,因此外墙标签一方面应符合视觉证据,另一方面应符合建筑原则-个体资产(例如门,窗)如何与建筑相互作用彼此形成一个整体的立面。为此,我们首先提出一种递归拆分方法,将立面分割成一堆图块以进行语义识别。分割可提高处理速度,在适当的规模上引导视觉识别,并使提取建筑原理变得容易。给定一组带有标签图的分段训练镜头,我们然后确定一组元特征以捕获视觉证据和建筑原理。这些功能用于训练我们的外墙标签模型。在测试阶段,从分割的立面和推断的标签图中提取特征。重复以下三个步骤,直到达到最佳标签:1)对当前标签提出修改; 2)为建议的标签提取新特征; 3)将新功能提供给标签模型,以决定是否接受修改。在实验中,我们在ECP外墙数据集上评估了我们的方法,并且在像素级别和结构级别上都比最新技术获得了更高的精度。

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