Article ID Journal Published Year Pages File Type
4465300 International Journal of Applied Earth Observation and Geoinformation 2011 10 Pages PDF
Abstract

The interpretation of remotely sensed images in a spatiotemporal context is becoming a valuable research topic. However, the constant growth of data volume in remote sensing imaging makes reaching conclusions based on collected data a challenging task. Recently, data mining appears to be a promising research field leading to several interesting discoveries in various areas such as marketing, surveillance, fraud detection and scientific discovery. By integrating data mining and image interpretation techniques, accurate and relevant information (i.e. functional relation between observed parcels and a set of informational contents) can be automatically elicited.This study presents a new approach to predict spatiotemporal changes in satellite image databases. The proposed method exploits fuzzy sets and data mining concepts to build predictions and decisions for several remote sensing fields. It takes into account imperfections related to the spatiotemporal mining process in order to provide more accurate and reliable information about land cover changes in satellite images. The proposed approach is validated using SPOT images representing the Saint-Denis region, capital of Reunion Island. Results show good performances of the proposed framework in predicting change for the urban zone.

Research highlights► The proposed approach combines data mining and fuzzy reasoning in order to predict urban changes. ► Results of studying the impact of the urban changes show that the non-dense vegetation zones are the mainly considered by the urban growth in the Saint-Denis region (Reunion Island). ► Performances of the proposed approach are evaluated by comparing proposed and real urban changes.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Computers in Earth Sciences
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