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RSS FeedsRemote Sensing, Vol. 10, Pages 821: Optimal Seamline Detection for Orthoimage Mosaicking Based on DSM and Improved JPS Algorithm (Remote Sensing)

 
 

4 june 2018 18:02:57

 
Remote Sensing, Vol. 10, Pages 821: Optimal Seamline Detection for Orthoimage Mosaicking Based on DSM and Improved JPS Algorithm (Remote Sensing)
 


Based on the digital surface model (DSM) and jump point search (JPS) algorithm, this study proposed a novel approach to detect the optimal seamline for orthoimage mosaicking. By threshold segmentation, DSM was first identified as ground regions and obstacle regions (e.g., buildings, trees, and cars). Then, the mathematical morphology method was used to make the edge of obstacles more prominent. Subsequently, the processed DSM was considered as a uniform-cost grid map, and the JPS algorithm was improved and employed to search for key jump points in the map. Meanwhile, the jump points would be evaluated according to an optimized function, finally generating a minimum cost path as the optimal seamline. Furthermore, the search strategy was modified to avoid search failure when the search map was completely blocked by obstacles in the search direction. Comparison of the proposed method and the Dijkstra’s algorithm was carried out based on two groups of image data with different characteristics. Results showed the following: (1) the proposed method could detect better seamlines near the centerlines of the overlap regions, crossing far fewer ground objects; (2) the efficiency and resource consumption were greatly improved since the improved JPS algorithm skips many image pixels without them being explicitly evaluated. In general, based on DSM, the proposed method combining threshold segmentation, mathematical morphology, and improved JPS algorithms was helpful for detecting the optimal seamline for orthoimage mosaicking.


 
59 viewsCategory: Geology, Physics
 
Remote Sensing, Vol. 10, Pages 823: How Well Does the `Small Fire Boost` Methodology Used within the GFED4.1s Fire Emissions Database Represent the Timing, Location and Magnitude of Agricultural Burning? (Remote Sensing)
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