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Coupling Visual Semantics and High-level Relational Characterization within a Transparent and Penetrable Image Retrieval Framework

机译:耦合视觉语义和高级关系表征在透明和可渗透图像检索框架内

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We propose to enhance the performance of the S.I.R. image indexing and retrieval architecture [1,2] through the integration of a query-by-example (QBE) framework based on high-level image descriptions instead of their extracted low-level features. This framework features a bi-facetted conceptual model coupling visual semantics and relational spatial characterization and operates on image objects (abstractions of visual entities) in an attempt to perform querying operations beyond state-of-the-art relevance feedback (RF) frameworks. Also, it manipulates a rich query language consisting of several boolean operators, which therefore leads to optimized user interaction and increased retrieval performance.
机译:我们建议加强S.I.R.的表现。图像索引和检索架构通过集成基于高级图像描述的查询逐个示例(Qbe)框架而不是其提取的低级功能。该框架具有双关联概念模型耦合视觉语义和关系空间特征,并在图像对象(视觉实体的抽象)上运行,以便在最先进的相关反馈(RF)框架之外执行查询操作。此外,它还操纵由多个布尔运算符组成的丰富查询语言,因此导致优化用户交互和增加的检索性能。

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