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Discriminative Multi-View Interactive Image Re-Ranking

机译:区分性多视图交互式图像重新排列

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摘要

Given an unreliable visual patterns and insufficient query information, content-based image retrieval is often suboptimal and requires image re-ranking using auxiliary information. In this paper, we propose a discriminative multi-view interactive image re-ranking (DMINTIR), which integrates user relevance feedback capturing users’ intentions and multiple features that sufficiently describe the images. In DMINTIR, heterogeneous property features are incorporated in the multi-view learning scheme to exploit their complementarities. In addition, a discriminatively learned weight vector is obtained to reassign updated scores and target images for re-ranking. Compared with other multi-view learning techniques, our scheme not only generates a compact representation in the latent space from the redundant multi-view features but also maximally preserves the discriminative information in feature encoding by the large-margin principle. Furthermore, the generalization error bound of the proposed algorithm is theoretically analyzed and shown to be improved by the interactions between the latent space and discriminant function learning. Experimental results on two benchmark data sets demonstrate that our approach boosts baseline retrieval quality and is competitive with the other state-of-the-art re-ranking strategies.
机译:给定不可靠的视觉模式和不足的查询信息,基于内容的图像检索通常次优,需要使用辅助信息对图像进行重新排名。在本文中,我们提出了一种判别式多视图交互式图像重新排序(DMINTIR),该模型将捕获用户意图的用户相关性反馈与足以描述图像的多种功能集成在一起。在DMINTIR中,异构属性特征被合并到多视图学习方案中,以利用它们的互补性。另外,获得有区别学习的权重向量,以重新分配更新的得分和目标图像以进行重新排名。与其他多视图学习技术相比,我们的方案不仅通过冗余的多视图特征在潜在空间中生成了紧凑的表示形式,而且还通过大余量原理在特征编码中最大程度地保留了区分性信息。此外,从理论上分析了该算法的泛化误差范围,并通过潜在空间与判别函数学习之间的相互作用来改善了算法的泛化误差范围。在两个基准数据集上的实验结果表明,我们的方法提高了基线检索质量,并且与其他最新的重新排名策略相比具有竞争力。

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