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A SEMANTIC INDEX STRUCTURE FOR MULTIMEDIA RETRIEVAL

机译:多媒体检索的语义索引结构

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摘要

To be effective multimedia retrieval mechanisms, index methods must provide not only efficient access but also meaningful retrieval by addressing challenges in multimedia retrieval. This article presents the AH+-tree, a height-balanced, tree-based index structure that efficiently incorporates high-level affinity information to support Content-Based Image Retrieval (CBIR) through similarity queries. The incorporation of affinity information allows the AH+-tree to address the problems of semantic gap and user perception subjectivity inherent to multimedia retrieval. Based on the Affinity-Hybrid Tree (AH-Tree), the AH+-tree utilizes affinity information in a novel way to eliminate the I/O overhead of the AH-Tree while maintaining the same functionality and quality of results. We explain the structure of the AH+-tree and implement and analyze algorithms for tree construction and similarity queries (range and nearest neighbor). Experimental results demonstrate the superior I/O efficiency of the AH+-tree over that of the AH-Tree and the M-tree without a detrimental impact on real-time costs of the retrieval process.
机译:为了成为有效的多媒体检索机制,索引方法不仅必须提供有效的访问,还必须通过解决多媒体检索中的挑战来提供有意义的检索。本文介绍了AH +树,这是一种高度平衡的,基于树的索引结构,该结构可以有效地合并高级相似性信息,以通过相似性查询支持基于内容的图像检索(CBIR)。相似性信息的合并使AH +树可以解决多媒体检索固有的语义鸿沟和用户感知主观性的问题。基于亲和性混合树(AH-Tree),AH +-树以新颖的方式利用亲和性信息,消除了AH-Tree的I / O开销,同时保持了相同的功能和结果质量。我们解释了AH +树的结构,并实现和分析了用于树结构和相似性查询(范围和最近邻居)的算法。实验结果表明,AH +树的I / O效率优于AH树和M树,而对检索过程的实时成本没有不利影响。

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