期刊论文详细信息
Earth sciences research journal
A co-occurrence region based Bayesian network stepwise remote sensing image retrieval algorithm
Zeng, Rui1  Wang, Yingyan2 
[1] School of Electro-mechanical and Information Technology, China;Zhejiang University of Technology, China
关键词: the Bayesian network;    Co-occurrence region;    Remote sensing image retrieval.;   
DOI  :  10.15446/esrj.v22n1.66107
学科分类:天文学(综合)
来源: Universidad Nacional de Colombia * Departamento de Geociencias
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【 摘 要 】

Although scholars have conducted numerous researches on content-based image retrieval and obtained great achievements, they make little progress in studying remote sensing image retrieval. Both theoretical and application systems are immature. Since remote sensing images are characterized by large data volume, broad coverage, vague themes and rich semantics, the research results on natural images and medical images cannot be directly used in remote sensing image retrieval. Even perfect content-based remote sensing image retrieval systems have many difficulties with data organization, storage and management, feature description and extraction, similarity measurement, relevance feedback, network service mode, and system structure design and implementation. This paper proposes a remote sensing image retrieval algorithm that combines co-occurrence region based Bayesian network image retrieval with average high-frequency signal strength. By Bayesian networks, it establishes correspondence relationships between images and semantics, thereby realizing semantic-based retrieval of remote sensing images. In the meantime, integrated región matching is introduced for iterative retrieval, which effectively improves the precision of semantic retrieval.

【 授权许可】

CC BY   

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