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Block-based long-term content-based image retrieval using multiple features

机译:使用多种功能的基于块的长期基于内容的图像检索

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摘要

This paper proposes a novel content-based image retrieval technique, which integrates block-based visual features and user's query concept-based semantic features. It also facilitates short-term and long-term learning processes by integrating users' historical relevance feedback information. The history is compactly stored in a semantic feature matrix and efficiently represented as semantic features of the images. The short-term relevance feedback technique can benefit from long-term learning. The high-level semantic features are dynamically updated based on users' query concept and therefore represent the image's semantic meaning more accurately. Our extensive experimental results demonstrate that the proposed system outperforms its seven state-of-the-art peer systems in terms of retrieval precision and storage space.
机译:本文提出了一种新颖的基于内容的图像检索技术,该技术融合了基于块的视觉特征和基于用户查询概念的语义特征。通过整合用户的历史相关性反馈信息,它还促进了短期和长期的学习过程。历史被紧凑地存储在语义特征矩阵中,并有效地表示为图像的语义特征。短期相关性反馈技术可以从长期学习中受益。高级语义特征会根据用户的查询概念进行动态更新,因此可以更准确地表示图像的语义。我们广泛的实验结果表明,在检索精度和存储空间方面,拟议的系统优于其七个最新的对等系统。

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