JOURNAL ARTICLE

Multi-granularity synthesis segmentation for high spatial resolution Remote sensing images

Lina YiPengfei LiuXiaojun QiaoXiaoning ZhangYuan GaoBoyan Feng

Year: 2014 Journal:   IOP Conference Series Earth and Environmental Science Vol: 17 Pages: 012197-012197   Publisher: IOP Publishing

Abstract

Traditional segmentation method can only partition an image in a single granularity space, with segmentation accuracy limited to the single granularity space. This paper proposes a multi-granularity synthesis segmentation method for high spatial resolution remote sensing images based on a quotient space model. Firstly, we divide the whole image area into multiple granules (regions), each region is consisted of ground objects that have similar optimal segmentation scale, and then select and synthesize the sub-optimal segmentations of each region to get the final segmentation result. To validate this method, the land cover category map is used to guide the scale synthesis of multi-scale image segmentations for Quickbird image land use classification. Firstly, the image is coarsely divided into multiple regions, each region belongs to a certain land cover category. Then multi-scale segmentation results are generated by the Mumford-Shah function based region merging method. For each land cover category, the optimal segmentation scale is selected by the supervised segmentation accuracy assessment method. Finally, the optimal scales of segmentation results are synthesized under the guide of land cover category. Experiments show that the multi-granularity synthesis segmentation can produce more accurate segmentation than that of a single granularity space and benefit the classification.

Keywords:
Granularity Segmentation Scale-space segmentation Segmentation-based object categorization Minimum spanning tree-based segmentation Computer science Artificial intelligence Image segmentation Land cover Pattern recognition (psychology) Scale (ratio) Computer vision Scale space Image (mathematics) Geography Image processing Land use Cartography

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Topics

Remote-Sensing Image Classification
Physical Sciences →  Engineering →  Media Technology
Advanced Image Fusion Techniques
Physical Sciences →  Engineering →  Media Technology
Geochemistry and Geologic Mapping
Physical Sciences →  Computer Science →  Artificial Intelligence

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