The accurate representation of 3D building models in urban environments is significantly hindered by challenges such as texture occlusion, blurring, and missing details, which are difficult to mitigate through standard photogrammetric texture mapping pipelines. Current image completion methods often struggle to produce structured results and effectively handle the intricate nature of highly-structured fa\c{c}ade textures with diverse architectural styles. Furthermore, existing image synthesis methods encounter difficulties in preserving high-frequency details and artificial regular structures, which are essential for achieving realistic fa\c{c}ade texture synthesis. To address these challenges, we introduce a novel approach for synthesizing fa\c{c}ade texture images that authentically reflect the architectural style from a structured label map, guided by a ground-truth fa\c{c}ade image. In order to preserve fine details and regular structures, we propose a regularity-aware multi-domain method that capitalizes on frequency information and corner maps. We also incorporate SEAN blocks into our generator to enable versatile style transfer. To generate plausible structured images without undesirable regions, we employ image completion techniques to remove occlusions according to semantics prior to image inference. Our proposed method is also capable of synthesizing texture images with specific styles for fa\c{c}ades that lack pre-existing textures, using manually annotated labels. Experimental results on publicly available fa\c{c}ade image and 3D model datasets demonstrate that our method yields superior results and effectively addresses issues associated with flawed textures. The code and datasets will be made publicly available for further research and development.
翻译:准确表现城市环境中的三维建筑模型受到许多挑战的阻碍,如纹理遮挡、模糊和缺失细节,这些难以通过标准的摄影测量纹理映射流水线来缓解。当前的图像完成方法通常难以产生结构化结果,并有效处理具有多种建筑风格的高度结构化外墙纹理的复杂性。此外,现有的图像合成方法遇到困难,难以保留高频详细信息和人工规则结构,这对于实现逼真的外墙纹理合成是必要的。为了解决这些挑战,我们介绍了一种新的方法,该方法通过由地面真实外墙图像引导的有结构标签图的外墙纹理图像合成来准确地反映建筑风格。为了保留精细的细节和规则的结构,我们提出了一个基于频率信息和角点图的规则感知的多域方法。我们还将SEAN块纳入生成器中,以实现多样化的风格转移。为了生成无不良区域的合理结构化图像,我们在图像推理前使用图像完成技术根据语义去除遮挡。我们提出的方法还能够使用手工注释的标签为缺乏预先存在的纹理的外墙合成具有特定风格的纹理图像。公开的外墙图像和三维模型数据集的实验结果表明,我们的方法产生了优越的结果,并有效地解决了与有缺陷的纹理相关的问题。代码和数据集将公开发布以供进一步的研究和开发。