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A semi-supervised learning algorithm for relevance feedback and collaborative image retrieval

机译:用于相关反馈和协作图像检索的半监督学习算法

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The interaction of users with search services has been recognized as an important mechanism for expressing and handling user information needs. One traditional approach for supporting such interactive search relies on exploiting relevance feedbacks (RF) in the searching process. For large-scale multimedia collections, however, the user efforts required in RF search sessions is considerable. In this paper, we address this issue by proposing a novel semi-supervised approach for implementing RF-based search services. In our approach, supervised learning is performed taking advantage of relevance labels provided by users. Later, an unsupervised learning step is performed with the objective of extracting useful information from the intrinsic dataset structure. Furthermore, our hybrid learning approach considers feedbacks of different users, in collaborative image retrieval (CIR) scenarios. In these scenarios, the relationships among the feedbacks provided by different users are exploited, further reducing the collective efforts. Conducted experiments involving shape, color, and texture datasets demonstrate the effectiveness of the proposed approach. Similar results are also observed in experiments considering multimodal image retrieval tasks. Keywords Content-based image retrieval Semi-supervised learning Relevance feedback Collaborative image retrieval Recommendation
机译:用户与搜索服务的交互已被认为是表达和处理用户信息需求的重要机制。支持这种交互式搜索的一种传统方法依赖于在搜索过程中利用相关性反馈(RF)。但是,对于大规模的多媒体收藏,RF搜索会话中需要用户付出大量努力。在本文中,我们通过提出一种新颖的半监督方法来实现基于RF的搜索服务来解决此问题。在我们的方法中,监督学习是利用用户提供的相关标签来执行的。之后,执行非监督学习步骤,目的是从内部数据集结构中提取有用的信息。此外,我们的混合学习方法在协作图像检索(CIR)场景中考虑了不同用户的反馈。在这些情况下,将利用不同用户提供的反馈之间的关系,从而进一步减少了集体的努力。进行的涉及形状,颜色和纹理数据集的实验证明了该方法的有效性。在考虑多模式图像检索任务的实验中也观察到了相似的结果。关键词基于内容的图像检索半监督学习关联反馈协同图像检索推荐

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