Model Semantic Relations with Extended Attributes

Ye Liu, Xiangwei Kong, Haiyan Fu, Xingang You, Yunbiao Guo
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引用次数: 2

Abstract

Attribute based image retrieval has offered a powerful way to bridge the gap between low level features and high level semantic concepts. However, existing methods rely on manually pre-labeled queries, limiting their scalability and discriminative power. Moreover, such retrieval systems restrict the users to use only the exact pre-defined query words when describing the intended search targets, and thus fail to offer good user experience. In this paper, we propose a principled approach to automatically enrich the attribute representation by leveraging additional linguistic knowledge. To this end, an external semantic pool is introduced into the learning paradigm. In addition to modelling the relations between attributes and low level features, we also model the join interdependencies of pre-labeled attributes and semantically extended attributes, which is more expressive and flexible. We further propose a novel semantic relation measure for extended attribute learning in order to take user preference into account, which we see as a step towards practical systems. Extensive experiments on several attribute benchmarks show that our approach outperforms several state-of-the-art methods and achieves promising results in improving user experience.
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用扩展属性建模语义关系
基于属性的图像检索为弥合低级特征和高级语义概念之间的差距提供了一种强有力的方法。然而,现有的方法依赖于手动预标记的查询,限制了它们的可伸缩性和判别能力。此外,这种检索系统限制用户在描述预期的搜索目标时只能使用精确的预定义查询词,因此无法提供良好的用户体验。在本文中,我们提出了一种原则性的方法,通过利用额外的语言知识来自动丰富属性表示。为此,在学习范式中引入了一个外部语义池。除了对属性和底层特征之间的关系进行建模外,我们还对预标记属性和语义扩展属性之间的连接相互依赖关系进行建模,这更具表现力和灵活性。为了考虑用户偏好,我们进一步提出了一种用于扩展属性学习的新的语义关系度量,我们认为这是迈向实用系统的一步。在几个属性基准上进行的大量实验表明,我们的方法优于几种最先进的方法,并在改善用户体验方面取得了有希望的结果。
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