Middle East AI

This Week arXiv

Modeling Complex Object Changes in Satellite Image Time-Series: Approach based on CSP and Spatiotemporal Graph

arXiv · · Notable

Summary

This paper introduces a novel approach for monitoring and analyzing the evolution of complex geographic objects in satellite image time-series. The method uses a spatiotemporal graph and constraint satisfaction problems (CSP) to model and analyze object changes. Experiments on real-world satellite images from Saudi Arabian cities demonstrate the effectiveness of the proposed approach.

Keywords

satellite imagery · time-series analysis · spatiotemporal graph · constraint satisfaction · geographic objects

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