A platform for research: civil engineering, architecture and urbanism
Evaluating Automated Floorplan Generation: Benchmark on Residential Buildings
In the rapidly advancing field of automated building assessment, the accurate generation of floorplans from point cloud data is crucial, particularly for residential buildings which form a significant part of the urban environment. This study presents detailed evaluation of the latest state-of-the-art methods in automated floorplan generation, focusing exclusively on their application in indoor residential buildings. Our analysis assesses these methods using a diverse range of metrics, including accuracy, efficiency, and scalability, to understand their performance in interpreting complex residential environments. We evaluate two approaches, uncovering their strengths and shortcomings in various scenarios. The results of this comparative study are critical; they not only highlight the current capabilities and limitations of these methods but also pave the way for future enhancements. Our findings provide valuable insights for both academic researchers and industry professionals, emphasizing the need for further innovation and precision in the field of automated residential floorplan generation. This work contributes to the ongoing development of automated building assessment methodologies, aiming to optimize the process of transforming point cloud data into accurate and functional floorplans for residential buildings.
Evaluating Automated Floorplan Generation: Benchmark on Residential Buildings
In the rapidly advancing field of automated building assessment, the accurate generation of floorplans from point cloud data is crucial, particularly for residential buildings which form a significant part of the urban environment. This study presents detailed evaluation of the latest state-of-the-art methods in automated floorplan generation, focusing exclusively on their application in indoor residential buildings. Our analysis assesses these methods using a diverse range of metrics, including accuracy, efficiency, and scalability, to understand their performance in interpreting complex residential environments. We evaluate two approaches, uncovering their strengths and shortcomings in various scenarios. The results of this comparative study are critical; they not only highlight the current capabilities and limitations of these methods but also pave the way for future enhancements. Our findings provide valuable insights for both academic researchers and industry professionals, emphasizing the need for further innovation and precision in the field of automated residential floorplan generation. This work contributes to the ongoing development of automated building assessment methodologies, aiming to optimize the process of transforming point cloud data into accurate and functional floorplans for residential buildings.
Evaluating Automated Floorplan Generation: Benchmark on Residential Buildings
Lecture Notes in Civil Engineering
Francis, Adel (editor) / Miresco, Edmond (editor) / Melhado, Silvio (editor) / Elsafty, Abdullah (author) / Hartmann, Timo (author)
International Conference on Computing in Civil and Building Engineering ; 2024 ; Montreal, QC, Canada
Advances in Information Technology in Civil and Building Engineering ; Chapter: 34 ; 408-420
2025-03-30
13 pages
Article/Chapter (Book)
Electronic Resource
English
Simplification of polygons from point cloud data for automated floorplan generation
DataCite | 2024
|British Library Online Contents | 2008
Evaluating quality of life in residential care buildings
British Library Online Contents | 2007
|