Researches of analysis and parsing around fa\c{c}ades to enrich the 3D feature of fa\c{c}ade models by semantic information raised some attention in the community, whose main idea is to generate higher resolution components with similar shapes and textures to increase the overall resolution at the expense of reconstruction accuracy. While this approach works well for components like windows and doors, there is no solution for fa\c{c}ade background at present. In this paper, we introduce the concept of representative region texture, which can be used in the above modeling approach by tiling the representative texture around the fa\c{c}ade region, and propose a semi-supervised way to do representative region texture extraction from a fa\c{c}ade image. Our method does not require any additional labelled data to train as long as the semantic information is given, while a traditional end-to-end model requires plenty of data to increase its performance. Our method can extract texture from any repetitive images, not just fa\c{c}ade, which is not capable in an end-to-end model as it relies on the distribution of training set. Clustering with weighted distance is introduced to further increase the robustness to noise or an imprecise segmentation, and make the extracted texture have a higher resolution and more suitable for tiling. We verify our method on various fa\c{c}ade images, and the result shows our method has a significant performance improvement compared to only a random crop on fa\c{c}ade. We also demonstrate some application scenarios and proposed a fa\c{c}ade modeling workflow with the representative region texture, which has a better visual resolution for a regular fa\c{c}ade.
翻译:通过语义信息来丰富 3D 外观3D 特征的分析和分析研究 外观3c{ c} 外观3D 模型的解析研究 通过语义信息在社区中引起了一定的注意, 社区的主要想法是生成高分辨率组件, 其形状和纹理相似, 以重建准确性为代价提高整体分辨率。 虽然这种方法对窗体和门等组件效果良好, 但目前对外观背景没有解决方案。 本文中, 我们引入了具有代表性的区域纹理概念, 这一概念可以用于上述建模方法中, 其方法是在外观区域周围绘制有代表性的纹理, 提出半超超导方法, 代表从外观和纹理提取区域图案质, 并且通过一个更精确性能的解析算法, 我们的方法只能从任何重复的图像中提取纹理, 不仅在外观图像中标注, 也可以用一种半透明性能的半超超强的方法 来代表区域 。