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A novel long-term learning algorithm for relevance feedback in content-based image retrieval

机译:一种基于内容的图像检索中相关反馈的新型长期学习算法

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摘要

Relevance feedback has proven to be a powerful tool to bridge the semantic gap between low-level features and high-level human concepts in content-based image retrieval (CBIR). However, traditional short-term relevance feedback technologies are confined to using the current feedback record only. Log-based long-term learning captures the semantic relationships among images in a database by analyzing the historical relevance information to boost the retrieval performance effectively. In this paper, we propose an expanded-judging model to analyze the historical log data's semantic information and to expand the feedback sample set from both positive and negative relevant information. The index table is used to facilitate the log analysis. The expanded-judging model is applied in image retrieval by combining with short-term relevance feedback algorithms. Experiments were carried out to evaluate the proposed algorithm based on the Corel image database. The promising experimental results validate the effectiveness of our proposed expanded-judging model.
机译:事实证明,相关性反馈是弥合基于内容的图像检索(CBIR)中低级功能和高级人类概念之间的语义鸿沟的强大工具。但是,传统的短期相关性反馈技术仅限于使用当前的反馈记录。基于日志的长期学习通过分析历史关联信息来捕获数据库中图像之间的语义关系,从而有效地提高检索性能。在本文中,我们提出了一种扩展的判断模型,用于分析历史日志数据的语义信息,并从正面和负面相关信息中扩展反馈样本集。索引表用于方便日志分析。通过结合短期相关反馈算法,将扩展的判断模型应用于图像检索。实验进行了评估,以基于Corel图像数据库的算法。有希望的实验结果验证了我们提出的扩展评审模型的有效性。

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