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A Fuzzy Spatial Reasoner for Multi-Scale Geobia Ontologies

Photogrammetric engineering and remote sensing(2015)

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摘要
In Geographic Object-Based Image Analysis (GEOBIA) an image is partitioned into objects by a segmentation algorithm. These objects are then classified into semantic categories based on unsupervised/supervised methods, or knowledge-based methods, such as an ontology The aim of this paper was to develop a SPatial Ontology Reasoner (SPOR) to allow the development of GEOBIA ontologies by employing fuzzy spatial, and multi-scale representations, with time efficiency An enhanced version of the Web Ontology Language 2 (owl. 2) with fuzzy representations was adopted and expanded to represent fuzzy spatial relationships within the framework of GEOBIA. Segmentation results are stored within PostgreSQL. An ontology described the class/subclass hierarchy and class definitions. SPOR integrated PostgreSQL and the ontology, to classify the objects. To demonstrate the framework, a QuickBird image was employed for building extraction. Accuracy assessment indicated that 87 percent of building rooftops were detected.
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