Litcius/Paper detail

Indoor mapping and modeling by parsing floor plan images

Yijie Wu, Jianga Shang, Pan Chen, Sisi Zlatanova, Xuke Hu, Zhiyong Zhou

2020International Journal of Geographical Information Systems44 citationsDOI

Abstract

A large proportion of indoor spatial data is generated by parsing floor plans. However, a mature and automatic solution for generating high-quality building elements (e.g., walls and doors) and space partitions (e.g., rooms) is still lacking. In this study, we present a two-stage approach to indoor mapping and modeling (IMM) from floor plan images. The first stage vectorizes the building elements on the floor plan images and the second stage repairs the topological inconsistencies between the building elements, separates indoor spaces, and generates indoor maps and models. To reduce the shape complexity of indoor boundary elements, i.e., walls and openings, we harness the regularity of the boundary elements and extract them as rectangles in the first stage. Furthermore, to resolve the overlaps and gaps of the vectorized results, we propose an optimization model that adjusts the rectangle vertex coordinates to conform to the topological constraints. Experiments demonstrate that our approach achieves a considerable improvement in room detection without conforming to Manhattan World Assumption. Our approach also outputs instance-separate walls with consistent topology, which enables direct modeling into Industry Foundation Classes (IFC) or City Geography Markup Language (CityGML).

Topics & Concepts

CityGMLFloor planComputer scienceDoorsParsingBoundary (topology)Plan (archaeology)RectangleVertex (graph theory)Topology (electrical circuits)Building modelData miningArtificial intelligenceGeographyTheoretical computer scienceEngineering drawingGeometryMathematicsGraphSimulationEngineeringCombinatoricsArchaeologyMathematical analysisVisualizationOperating systemRemote Sensing and LiDAR ApplicationsRobotics and Sensor-Based Localization3D Surveying and Cultural Heritage