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Fire code review sketch dataset
Automatic assessments of building plans are uncommon in the early design stages, especially when schematic sketches are in raster format. Existing design evaluation tools, such as fire code reviewers, which are typically used in the late design stage, primarily evaluate vector format images that contain complete building information. These tools use conditional shape-embedding techniques to analyze the vector images. However, there are limitations to identifying and evaluating drawings through vector-shape relationships. Our research aimed to develop tools that can automatically assess schematic sketches in raster format to overcome the limitations of existing tools. We integrated a conditional shape-embedding tool, named Shape Machine, to assess vector images, with machine learning techniques, namely a Generative Adversarial Network (GAN), to assess raster sketches. This integration enables the evaluation of fire evacuation sketches in the early stages of the design process, thereby improving design efficiency and reducing costs. Moreover, in the future, this integration could allow the evaluation of designs in multiple image formats. ; We used Shape Machine (Economou et al. 2021), a technology based on shape grammar, to translate the fire codes into code statements and review the five key elements in building plans in vector format. To build our dataset, the text in the fire code was translated into ten checking functions that help recognize vector image data in the generated plans and review their compliance with different fire code criteria (see Figure 2). We developed a labeling rule that used different colors to mark areas with different plan errors (see Figure 3). Colors with RGB values ranging from 0 to 255 were used to differentiate the labels as much as possible. Therefore, we used ten combinations of RGB values to label the ten types of errors corresponding to the different fire code criteria. If any element in the room did not meet the code requirements, the room was colored accordingly; for example, ...
Fire code review sketch dataset
Automatic assessments of building plans are uncommon in the early design stages, especially when schematic sketches are in raster format. Existing design evaluation tools, such as fire code reviewers, which are typically used in the late design stage, primarily evaluate vector format images that contain complete building information. These tools use conditional shape-embedding techniques to analyze the vector images. However, there are limitations to identifying and evaluating drawings through vector-shape relationships. Our research aimed to develop tools that can automatically assess schematic sketches in raster format to overcome the limitations of existing tools. We integrated a conditional shape-embedding tool, named Shape Machine, to assess vector images, with machine learning techniques, namely a Generative Adversarial Network (GAN), to assess raster sketches. This integration enables the evaluation of fire evacuation sketches in the early stages of the design process, thereby improving design efficiency and reducing costs. Moreover, in the future, this integration could allow the evaluation of designs in multiple image formats. ; We used Shape Machine (Economou et al. 2021), a technology based on shape grammar, to translate the fire codes into code statements and review the five key elements in building plans in vector format. To build our dataset, the text in the fire code was translated into ten checking functions that help recognize vector image data in the generated plans and review their compliance with different fire code criteria (see Figure 2). We developed a labeling rule that used different colors to mark areas with different plan errors (see Figure 3). Colors with RGB values ranging from 0 to 255 were used to differentiate the labels as much as possible. Therefore, we used ten combinations of RGB values to label the ten types of errors corresponding to the different fire code criteria. If any element in the room did not meet the code requirements, the room was colored accordingly; for example, ...
Fire code review sketch dataset
Han Tu (Autor:in) / Yichao Shi (Autor:in) / Meng Xu (Autor:in)
21.03.2023
Forschungsdaten
Elektronische Ressource
Englisch
DDC:
690
Fire code review: New Zealand's performance based fire code
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|DataCite | 2024
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