1. Semantics-Driven Remote Sensing Scene Understanding Framework for Grounded Spatio-Contextual Scene Descriptions
- Author
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Surya S. Durbha, Rajat C. Shinde, and Abhishek V. Potnis
- Subjects
Computer science ,Geography, Planning and Development ,0211 other engineering and technologies ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,semantics-driven ,lcsh:G1-922 ,02 engineering and technology ,Ontology (information science) ,Semantics ,flood ontology ,Rendering (computer graphics) ,semantic web ,0202 electrical engineering, electronic engineering, information engineering ,Earth and Planetary Sciences (miscellaneous) ,remote sensing scene understanding ,Computers in Earth Sciences ,Semantic Web ,021101 geological & geomatics engineering ,Remote sensing ,ComputingMethodologies_COMPUTERGRAPHICS ,Scene Knowledge Graphs ,spatio-contextual ,Resource Description Framework (RDF) ,Core ontology ,Semantic reasoner ,Semantic Web Rule Language (SWRL) ,GeoSPARQL ,Domain knowledge ,020201 artificial intelligence & image processing ,grounded natural language scene descriptions ,lcsh:Geography (General) ,Semantic gap - Abstract
Earth Observation data possess tremendous potential in understanding the dynamics of our planet. We propose the Semantics-driven Remote Sensing Scene Understanding (Sem-RSSU) framework for rendering comprehensive grounded spatio-contextual scene descriptions for enhanced situational awareness. To minimize the semantic gap for remote-sensing-scene understanding, the framework puts forward the transformation of scenes by using semantic-web technologies to Remote Sensing Scene Knowledge Graphs (RSS-KGs). The knowledge-graph representation of scenes has been formalized through the development of a Remote Sensing Scene Ontology(RSSO)&mdash, a core ontology for an inclusive remote-sensing-scene data product. The RSS-KGs are enriched both spatially and contextually, using a deductive reasoner, by mining for implicit spatio-contextual relationships between land-cover classes in the scenes. The Sem-RSSU, at its core, constitutes novel Ontology-driven Spatio-Contextual Triple Aggregation and realization algorithms to transform KGs to render grounded natural language scene descriptions. Considering the significance of scene understanding for informed decision-making from remote sensing scenes during a flood, we selected it as a test scenario, to demonstrate the utility of this framework. In that regard, a contextual domain knowledge encompassing Flood Scene Ontology (FSO) has been developed. Extensive experimental evaluations show promising results, further validating the efficacy of this framework.
- Published
- 2021