Towards a Semi-automatic Semantic Approach for Satellite Image Analysis (original) (raw)
2013, Procedia Computer Science
The extended use of high and very high spatial resolution imagery inherently demands the adoption of classification methods capable of capturing the underlying semantic. Object-oriented classification methods are currently considered the most appropriate alternative, due to the incorporation of contextual information and domain knowledge into the analysis. Integrating knowledge initially requires a detailed process of acquisition and later the achievement of a formal representation. Ontologies constitute a very suitable approach to address both knowledge formalization and exploitation. A novel semi-automatic semantic approach focused on the extraction and classification of urban objects is hereby introduced. The use of a three-layered architecture allows the separation of concerns among knowledge, rules and experience. Knowledge represents the fundamental layer with which the other layers interact. Rules are meant to derive conclusions and make assertions based on knowledge. Finally, the experience layer supports the classification process in case of failure when attempting to identify an object, by applying specific expert rules to infer unusual membership.
Loading Preview
Sorry, preview is currently unavailable. You can download the paper by clicking the button above.