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Web Image Search Re-Ranking With Click-Based Similarity and Typicality

机译:基于点击的相似性和典型性的Web图像搜索重新排名

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In image search re-ranking, besides the well-known semantic gap, intent gap, which is the gap between the representation of users’ query/demand and the real intent of the users, is becoming a major problem restricting the development of image retrieval. To reduce human effects, in this paper, we use image click-through data, which can be viewed as the implicit feedback from users, to help overcome the intention gap, and further improve the image search performance. Generally, the hypothesis—visually similar images should be close in a ranking list—and the strategy—images with higher relevance should be ranked higher than others—are widely accepted. To obtain satisfying search results, thus, image similarity and the level of relevance typicality are determinate factors correspondingly. However, when measuring image similarity and typicality, conventional re-ranking approaches only consider visual information and initial ranks of images, while overlooking the influence of click-through data. This paper presents a novel re-ranking approach, named spectral clustering re-ranking with click-based similarity and typicality. First, to learn an appropriate similarity measurement, we propose click-based multi-feature similarity learning algorithm, which conducts metric learning based on click-based triplets selection, and integrates multiple features into a unified similarity space via multiple kernel learning. Then, based on the learnt click-based image similarity measure, we conduct spectral clustering to group visually and semantically similar images into same clusters, and get the final re-rank list by calculating click-based clusters typicality and within-clusters click-based image typicality in descending order. Our experiments conducted on two real-world query-image data sets with diverse representative queries show that our proposed re-ranking approach can significantly improve initial search results, and outperform several existing- re-ranking approaches.
机译:在图像搜索重排中,除了众所周知的语义鸿沟外,意图鸿沟(即用户查询/需求表示与用户真实意图之间的鸿沟)正成为制约图像检索发展的主要问题。 。为了减少人为的影响,在本文中,我们使用图像点击数据,可以将其视为用户的隐式反馈,以帮助克服意图差距,并进一步提高图像搜索性能。通常,这一假设(在视觉上相似的图像应在排名列表中靠前)和策略(相关性较高的图像应在其他列表中排名较高)被广泛接受。为了获得令人满意的搜索结果,图像相似度和相关性典型度相应地成为决定因素。但是,在测量图像的相似性和典型性时,常规的重新排名方法仅考虑视觉信息和图像的初始等级,而忽略了点击数据的影响。本文提出了一种新颖的重新排名方法,即基于点击的相似性和典型性的频谱聚类重新排名。首先,为了学习合适的相似性度量,我们提出了基于点击的多特征相似性学习算法,该算法基于基于点击的三元组选择进行度量学习,并通过多次核学习将多个特征集成到统一的相似性空间中。然后,基于学习到的基于点击的图像相似性度量,我们进行频谱聚类,将视觉和语义上相似的图像分组为相同的聚类,并通过计算基于点击的聚类的典型性和基于聚类的基于点击的聚类来获得最终的重新排名图像典型性按降序排列。我们在具有不同代表​​查询的两个现实世界查询图像数据集上进行的实验表明,我们提出的重新排名方法可以显着改善初始搜索结果,并且优于几种现有的重新排名方法。

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