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Dynamic semantic feature-based long-term cross-session learning approach to content-based image retrieval

机译:基于动态语义特征的长期跨会话学习方法用于基于内容的图像检索

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This paper proposes a novel content-based image retrieval technique, which facilitates short-term (intra-query) and long-term (inter-query) learning processes by integrating accumulated users' historical relevance feedback-based semantic knowledge. The history is efficiently represented as a dynamic semantic feature of the images. As such, the high-level semantic similarity measure can be dynamically adapted based on the semantic relevance derived from the dynamic semantic features. The short-term relevance feedback technique can benefit from long-term learning. Our extensive experiments show that the proposed system outperforms three peer systems in the context of both correct and erroneous relevance feedback.
机译:本文提出了一种新颖的基于内容的图像检索技术,该技术通过集成累积的用户基于历史相关性反馈的语义知识来促进短期(查询内)和长期(查询间)学习过程。历史被有效地表示为图像的动态语义特征。这样,可以基于从动态语义特征得出的语义相关性来动态地调整高级语义相似性度量。短期相关性反馈技术可以从长期学习中受益。我们的大量实验表明,在正确和错误的相关性反馈情况下,提出的系统均优于三个对等系统。

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