论文标题
基于注意的查询扩展学习
Attention-Based Query Expansion Learning
论文作者
论文摘要
查询扩展是一种广泛用于图像搜索的技术,该技术包括将原始查询的高度排名图像组合到扩展的查询中,然后重新发行,通常会导致回忆和精度增加。查询扩展的一个重要方面是选择一种将图像组合到新查询中的合适方法。有趣的是,尽管查询扩展取得了不可否认的经验成功,但具有不同警告的临时方法已经占据了景观的主导程度,并且在学习如何进行查询扩展方面没有进行大量研究。在本文中,我们提出了一个更有原则的框架来查询扩展,其中一个人以歧视性的方式训练了一个模型,该模型了解如何汇总图像以形成扩展的查询。在此框架内,我们提出了一个模型,该模型利用自我发挥的机制来有效地学习在汇总它们之前如何在不同图像之间传输信息。我们的方法比标准基准的现有方法获得了更高的准确性。更重要的是,我们的方法是唯一一种在不同的制度下始终表现出很高准确性的方法,克服了现有方法的警告。
Query expansion is a technique widely used in image search consisting in combining highly ranked images from an original query into an expanded query that is then reissued, generally leading to increased recall and precision. An important aspect of query expansion is choosing an appropriate way to combine the images into a new query. Interestingly, despite the undeniable empirical success of query expansion, ad-hoc methods with different caveats have dominated the landscape, and not a lot of research has been done on learning how to do query expansion. In this paper we propose a more principled framework to query expansion, where one trains, in a discriminative manner, a model that learns how images should be aggregated to form the expanded query. Within this framework, we propose a model that leverages a self-attention mechanism to effectively learn how to transfer information between the different images before aggregating them. Our approach obtains higher accuracy than existing approaches on standard benchmarks. More importantly, our approach is the only one that consistently shows high accuracy under different regimes, overcoming caveats of existing methods.