Extracting 3D Topological Relations from Kinect's Point Cloud as a Sensor in Ubiquitous GIS

Abstract:
Spatial relationships between objects, containing the fundamental information relating to the environment. Among these spatial relationships can be noted such as directional relationships, like: “left”,”right”,” above”, and “bottom” or distance based relations such as: “near” or “far”. The topology relationships used more in GIS desired location can be also noted such as: “inside”, “intersection”, “touch”, and “outside” and etc. Extraction of relationships between different features are done on the basis of data modeling techniques, since the traditional data models don’t cover capabilities of the ubiquitous computing tools used in ubiquitous GIS to extract 3D relationships, we discuss the creation of facilities for the extraction of spatial relationships in ubiquitous GIS. A new generation of GIS is 3D ubiquitous GIS, which in this generation service functionality to any user, at any given time and place. With the advancement of new technologies in capturing 3D point clouds of the environment, general changes are created in ubiquitous computing. The sensors used to obtain environmental information is provided in this generation are often inexpensive sensors. One of the important issues associated with this generation is the extraction of 3D topological relationships to interact with the environment better, which these sensors don’t have this ability to extract 3D topological relationships. The purpose of this paper is to extract topological relations by smart sensors used in ubiquitous computing. . The methodology used in this paper, is taking advantage of bounding box algorithm for mining the scope of any object in depth, length and the height. The results obtained from Kinect sensor shows the possibility of topological relationships extraction based on the smart sensors in ubiquitous GIS.
Language:
Persian
Published:
Geospatial Engineering Journal, Volume:8 Issue: 2, 2017
Pages:
1 to 9
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