Abstract

Although interest in indoor space modeling is increasing, the quantity of indoor spatial data available is currently very scarce compared to its demand. Many studies have been carried out to acquire indoor spatial information from floorplan images because they are relatively cheap and easy to access. However, existing studies do not take international standards and usability into consideration, they consider only 2D geometry. This study aims to generate basic data that can be converted to indoor spatial information using IndoorGML (Indoor Geography Markup Language) thick wall model or the CityGML (City Geography Markup Language) level of detail 2 by creating vector-formed data while preserving wall thickness. To achieve this, recent Convolutional Neural Networks are used on floorplan images to detect wall and door pixels. Additionally, centerline and corner detection algorithms were applied to convert wall and door images into vector data. In this manner, we obtained high-quality raster segmentation results and reliable vector data with node-edge structure and thickness attributes that enabled the structures of vertical and horizontal wall segments and diagonal walls to be determined with precision. Some of the vector results were converted into CityGML and IndoorGML form and visualized, demonstrating the validity of our work.

Highlights

  • With developments in computer and mobile technologies, interest in indoor space modeling is increasing

  • Research has been conducted on generating indoor spatial information sing various data such as LiDAR (Light Detection and Ranging), BIM (Building Information Modeling), and 2D floorplans

  • We aimed to generate vector data that could be converted into CityGML LoD2 (Level of Detail 2) or IndoorGML thick wall models given floorplan images

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Summary

Introduction

With developments in computer and mobile technologies, interest in indoor space modeling is increasing. According to [1,2], the amount of indoor spatial data available, such as indoor navigation and indoor modelling, is very small relative to the demand. Research has been conducted on generating indoor spatial information sing various data such as LiDAR (Light Detection and Ranging), BIM (Building Information Modeling), and 2D floorplans. BIM—especially its IFC(Industry Foundation Classes)—is a widely used open file format that describes 3D buildings edited by various software like Revit and ArchiCAD [5]. It contains enough attributes and geometric properties of all building elements that can be converted to spatial data. Several papers on the subject and methods for recovering vector data from raster 2D floorplans have been suggested to overcome this

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