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首页> 外文期刊>International journal of multimedia data engineering & management >Hybrid Query Refinement:A Strategy for a Distance Based Index Structure to Refine Multimedia Queries
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Hybrid Query Refinement:A Strategy for a Distance Based Index Structure to Refine Multimedia Queries

机译:混合查询细化:基于距离的索引结构细化多媒体查询的策略

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摘要

This paper proposes a hybrid query refinement model for distance-based index structures supporting content-based image retrievals. The framework refines a query by considering both the low-level feature space as well as the high-level semantic interpretations separately. Thus, it successfully handles queries where the gap between the feature components and the semantics is large. It refines the low-level feature space, indexed by the distance based index structure, in multiple iterations by introducing the concept of multipoint query in a metric space. It refines the high-level semantic space by dynamically adjusting the constructs of a framework, called the Markov Model Mediator (MMM), utilized to introduce the semantic relationships in the index structure. A k-nearest neighbor (k-NN) algorithm is designed to handle similarity searches that refine a query in multiple iterations utilizing the proposed hybrid query refinement model. Extensive experiments are performed demonstrating an increased relevance of query results in subsequent iterations while incurring a low computational overhead. Further, an evaluation metric, called the Model Score, is proposed to compare the performance of different retrieval frameworks in terms of both computation overhead and query result relevance. This metric enables the users to choose the retrieval framework appropriate for their requirements.
机译:本文提出了一种基于距离的索引结构的混合查询细化模型,该模型支持基于内容的图像检索。该框架通过分别考虑底层特征空间和高层语义解释来优化查询。因此,它成功处理了特征组件和语义之间的差距较大的查询。通过在度量空间中引入多点查询的概念,它可以在多次迭代中优化由基于距离的索引结构索引的低级特征空间。它通过动态地调整称为Markov模型介体(MMM)的框架的结构来完善高级语义空间,该框架用于在索引结构中引入语义关系。设计了一种k近邻算法(k-NN),以处理相似性搜索,该相似性搜索使用所提出的混合查询优化模型在多个迭代中优化查询。进行了广泛的实验,证明了查询结果在后续迭代中的相关性增加,同时计算开销较低。此外,提出了一种称为模型得分的评估指标,以根据计算开销和查询结果的相关性比较不同检索框架的性能。此度量标准使用户可以选择适合其要求的检索框架。

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