facade
Tracking the oil tankers seized by the US
BBC Verify has been tracking the Marinera for weeks. Housing, Europe ties, economy... what Canadians are hopeful for in 2026 The BBC spoke to people in Toronto and Montreal to find out what they're optimistic about heading into the new year. The powerful storm system brought blizzard conditions to areas of the Midwest and East Coast causing some travel delays. Governor Gavin Newsom has declared a state of emergency for parts of California, including Los Angeles, San Bernardino and San Diego. The White Settlement Police Department is searching for two suspects.
- North America > United States > California > San Diego County > San Diego (0.25)
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Solar PV Installation Potential Assessment on Building Facades Based on Vision and Language Foundation Models
Liu, Ruyu, Zhuang, Dongxu, Zhang, Jianhua, Abate, Arega Getaneh, Nielsen, Per Sieverts, Wang, Ben, Liu, Xiufeng
Building facades represent a significant untapped resource for solar energy generation in dense urban environments, yet assessing their photovoltaic (PV) potential remains challenging due to complex geometries and semantic com ponents. This study introduces SF-SPA (Semantic Facade Solar-PV Assessment), an automated framework that transforms street-view photographs into quantitative PV deployment assessments. The approach combines com puter vision and artificial intelligence techniques to address three key challenges: perspective distortion correction, semantic understanding of facade elements, and spatial reasoning for PV layout optimization. Our four-stage pipeline processes images through geometric rectification, zero-shot semantic segmentation, Large Language Model (LLM) guided spatial reasoning, and energy simulation. Validation across 80 buildings in four countries demonstrates ro bust performance with mean area estimation errors of 6.2% ± 2.8% compared to expert annotations. The auto mated assessment requires approximately 100 seconds per building, a substantial gain in efficiency over manual methods. Simulated energy yield predictions confirm the method's reliability and applicability for regional poten tial studies, urban energy planning, and building-integrated photovoltaic (BIPV) deployment. Code is available at: https:github.com/CodeAXu/Solar-PV-Installation
- Asia > China > Tianjin Province > Tianjin (0.05)
- Asia > China > Zhejiang Province > Hangzhou (0.05)
- Europe > Norway (0.05)
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- Research Report > New Finding (0.46)
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Deep Learning-based Scalable Image-to-3D Facade Parser for Generating Thermal 3D Building Models
Yu, Yinan, Gonzalez-Caceres, Alex, Scheidegger, Samuel, Somanath, Sanjay, Hollberg, Alexander
Renovating existing buildings is essential for climate impact. Early-phase renovation planning requires simulations based on thermal 3D models at Level of Detail (LoD) 3, which include features like windows. However, scalable and accurate identification of such features remains a challenge. This paper presents the Scalable Image-to-3D Facade Parser (SI3FP), a pipeline that generates LoD3 thermal models by extracting geometries from images using both computer vision and deep learning. Unlike existing methods relying on segmentation and projection, SI3FP directly models geometric primitives in the orthographic image plane, providing a unified interface while reducing perspective distortions. SI3FP supports both sparse (e.g., Google Street View) and dense (e.g., hand-held camera) data sources. Tested on typical Swedish residential buildings, SI3FP achieved approximately 5% error in window-to-wall ratio estimates, demonstrating sufficient accuracy for early-stage renovation analysis. The pipeline facilitates large-scale energy renovation planning and has broader applications in urban development and planning.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Europe > Sweden > Vaestra Goetaland > Gothenburg (0.04)
- Europe > Switzerland (0.04)
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- Research Report > New Finding (0.45)
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- Construction & Engineering (1.00)
- Banking & Finance > Real Estate (0.66)
- Media > Photography (0.46)
FacaDiffy: Inpainting Unseen Facade Parts Using Diffusion Models
Froech, Thomas, Wysocki, Olaf, Xia, Yan, Xie, Junyu, Schwab, Benedikt, Cremers, Daniel, Kolbe, Thomas H.
High-detail semantic 3D building models are frequently utilized in robotics, geoinformatics, and computer vision. One key aspect of creating such models is employing 2D conflict maps that detect openings' locations in building facades. Yet, in reality, these maps are often incomplete due to obstacles encountered during laser scanning. To address this challenge, we introduce FacaDiffy, a novel method for inpainting unseen facade parts by completing conflict maps with a personalized Stable Diffusion model. Specifically, we first propose a deterministic ray analysis approach to derive 2D conflict maps from existing 3D building models and corresponding laser scanning point clouds. Furthermore, we facilitate the inpainting of unseen facade objects into these 2D conflict maps by leveraging the potential of personalizing a Stable Diffusion model. To complement the scarcity of real-world training data, we also develop a scalable pipeline to produce synthetic conflict maps using random city model generators and annotated facade images. Extensive experiments demonstrate that FacaDiffy achieves state-of-the-art performance in conflict map completion compared to various inpainting baselines and increases the detection rate by $22\%$ when applying the completed conflict maps for high-definition 3D semantic building reconstruction. The code is be publicly available in the corresponding GitHub repository: https://github.com/ThomasFroech/InpaintingofUnseenFacadeObjects
- Europe > United Kingdom > England > Oxfordshire > Oxford (0.14)
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.06)
- Europe > Slovenia > Drava > Municipality of Benedikt > Benedikt (0.04)
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Synthesizing 3D Abstractions by Inverting Procedural Buildings with Transformers
Dax, Maximilian, Berbel, Jordi, Stria, Jan, Guibas, Leonidas, Bergmann, Urs
Training is fully supervised, We generate abstractions of buildings, reflecting the essential based on a dataset of procedural buildings paired aspects of their geometry and structure, by learning with corresponding point cloud simulations. We develop to invert procedural models. We first build a dataset of various technical components tailored to the generation of abstract procedural building models paired with simulated abstractions. This includes the design of a programmatic point clouds and then learn the inverse mapping through a language to efficiently represent abstractions, its combination transformer. Given a point cloud, the trained transformer with a technique to guarantee transformer outputs consistent then infers the corresponding abstracted building in terms with the structure imposed by this language, and an of a programmatic language description.
- Europe > Germany > Baden-Württemberg > Tübingen Region > Tübingen (0.14)
- North America > United States > New York > New York County > New York City (0.04)
- North America > United States > Illinois > Cook County > Chicago (0.04)
- North America > United States > California > San Francisco County > San Francisco (0.04)
ZAHA: Introducing the Level of Facade Generalization and the Large-Scale Point Cloud Facade Semantic Segmentation Benchmark Dataset
Wysocki, Olaf, Tan, Yue, Froech, Thomas, Xia, Yan, Wysocki, Magdalena, Hoegner, Ludwig, Cremers, Daniel, Holst, Christoph
Facade semantic segmentation is a long-standing challenge in photogrammetry and computer vision. Although the last decades have witnessed the influx of facade segmentation methods, there is a lack of comprehensive facade classes and data covering the architectural variability. In ZAHA, we introduce Level of Facade Generalization (LoFG), novel hierarchical facade classes designed based on international urban modeling standards, ensuring compatibility with real-world challenging classes and uniform methods' comparison. Realizing the LoFG, we present to date the largest semantic 3D facade segmentation dataset, providing 601 million annotated points at five and 15 classes of LoFG2 and LoFG3, respectively. Moreover, we analyze the performance of baseline semantic segmentation methods on our introduced LoFG classes and data, complementing it with a discussion on the unresolved challenges for facade segmentation. We firmly believe that ZAHA shall facilitate further development of 3D facade semantic segmentation methods, enabling robust segmentation indispensable in creating urban digital twins.
- North America > United States (0.14)
- Europe > Germany > Bavaria > Upper Bavaria > Munich (0.05)
- Europe > Slovenia > Drava > Municipality of Benedikt > Benedikt (0.04)
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- Information Technology > Artificial Intelligence > Vision (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (1.00)
- Information Technology > Communications (0.93)
3D Building Generation in Minecraft via Large Language Models
Hu, Shiying, Huang, Zengrong, Hu, Chengpeng, Liu, Jialin
Recently, procedural content generation has exhibited considerable advancements in the domain of 2D game level generation such as Super Mario Bros. and Sokoban through large language models (LLMs). To further validate the capabilities of LLMs, this paper explores how LLMs contribute to the generation of 3D buildings in a sandbox game, Minecraft. We propose a Text to Building in Minecraft (T2BM) model, which involves refining prompts, decoding interlayer representation and repairing. Facade, indoor scene and functional blocks like doors are supported in the generation. Experiments are conducted to evaluate the completeness and satisfaction of buildings generated via LLMs. It shows that LLMs hold significant potential for 3D building generation. Given appropriate prompts, LLMs can generate correct buildings in Minecraft with complete structures and incorporate specific building blocks such as windows and beds, meeting the specified requirements of human users.
Window to Wall Ratio Detection using SegFormer
De Simone, Zoe, Biswas, Sayandeep, Wu, Oscar
Window to Wall Ratios (WWR) are key to assessing the energy, daylight and ventilation performance of buildings. Studies have shown that window area has a large impact on building performance and simulation. However, data to set up these environmental models and simulations is typically not available. Instead, a standard 40% WWR is typically assumed for all buildings. This paper leverages existing computer vision window detection methods to predict WWR of buildings from external street view images using semantic segmentation, demonstrating the potential for adapting established computer vision technique in architectural applications
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.15)
- North America > United States > California (0.04)
- Europe > Germany > Saarland > Saarbrücken (0.04)
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