Semi-Supervised Representative Region Texture Extraction of Fa\c{c}ade
Zhen Ni, Guitao Cao, Ye Duan

TL;DR
This paper introduces a semi-supervised method for extracting representative region textures from fa extc{c}ade images, enhancing 3D modeling by improving texture resolution without requiring extensive labeled data.
Contribution
The proposed approach enables texture extraction using semantic information alone, applicable to various repetitive images, and improves robustness through weighted clustering.
Findings
Significant performance improvement over random cropping.
Effective texture extraction for diverse fa extc{c}ade images.
Enhanced visual resolution in fa extc{c}ade modeling workflows.
Abstract
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…
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Taxonomy
Topics3D Shape Modeling and Analysis · Generative Adversarial Networks and Image Synthesis · Computer Graphics and Visualization Techniques
