Abstract

Abstract. Building data are one of the important data types in a topographic database. Building change detection after a period of time is necessary for many applications, such as identification of informal settlements. Based on the detected changes, the database has to be updated to ensure its usefulness. This paper proposes an improved building detection technique, which is a prerequisite for many building change detection techniques. The improved technique examines the gap between neighbouring buildings in the building mask in order to avoid under segmentation errors. Then, a new building change detection technique from LIDAR point cloud data is proposed. Buildings which are totally new or demolished are directly added to the change detection output. However, for demolished or extended building parts, a connected component analysis algorithm is applied and for each connected component its area, width and height are estimated in order to ascertain if it can be considered as a demolished or new building part. Finally, a graphical user interface (GUI) has been developed to update detected changes to the existing building map. Experimental results show that the improved building detection technique can offer not only higher performance in terms of completeness and correctness, but also a lower number of undersegmentation errors as compared to its original counterpart. The proposed change detection technique produces no omission errors and thus it can be exploited for enhanced automated building information updating within a topographic database. Using the developed GUI, the user can quickly examine each suggested change and indicate his/her decision with a minimum number of mouse clicks.

Highlights

  • Automation in building change detection is a key issue in the updating of building information in a topographic database

  • This paper proposes a new method for updating building information in a topographic map using LIDAR point cloud data

  • The experimental results are presented for building detection, change detection and map update separately

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Summary

INTRODUCTION

Automation in building change detection is a key issue in the updating of building information in a topographic database. (Murakami et al, 1999) suggested that omission error (e.g. missing new and/or demolished buildings and/or building parts) in automatic change detection has to be avoided completely in order to keep human involvement to a minimum This is because in the worst case scenario a possibility of omission error would require a manual inspection of the entire original data. This paper proposes a new method for updating building information in a topographic map using LIDAR point cloud data. It presents an improved automatic building detection technique that reduces instances of under segmentation in densely builtup areas. It proposes a new automatic building change detection approach by comparing the extracted building information with that in an existing building database. The GUI can be facilitated with an orhtophoto of the study area

RELATED WORK
PROPOSED IMPROVED BUILDING DETECTION TECHNIQUE
PROPOSED BUILDING CHANGE DETECTION TECHNIQUE
UPDATING THE BUILDING MAP
Deletion
STUDY AREA
Building detection results
Change detection results
Map from automatic buildings vs point density
CONCLUSION
Full Text
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