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Image Retrieval for Complex Queries Using Knowledge Embedding

机译:使用知识嵌入的复杂查询的图像检索

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摘要

With the increase in popularity of image-based applications, users are retrieving images using more sophisticated and complex queries. We present three types of complex queries, namely, long, ambiguous, and abstract. Each type of query has its own characteristics/complexities and thus leads to imprecise and incomplete image retrieval. Existing methods for image retrieval are unable to deal with the high complexity of such queries. Search engines need to integrate their image retrieval process with knowledge to obtain rich semantics for effective retrieval. We propose a framework, Image Retrieval using Knowledge Embedding (ImReKE), for embedding knowledge with images and queries, allowing retrieval approaches to understand the context of queries and images in a better way. ImReKE (IR_Approach, Knowledge_Base) takes two inputs, namely, an image retrieval approach and a knowledge base. It selects quality concepts (concepts that possess properties such as rarity, newness, etc.) from the knowledge base to provide rich semantic representations for queries and images to be leveraged by the image retrieval approach. For the first time, an effective knowledge base that exploits both the visual and textual information of concepts has been developed. Our extensive experiments demonstrate that the proposed framework improves image retrieval significantly for all types of complex queries. The improvement is remarkable in the case of abstract queries, which have not yet been dealt with explicitly in the existing literature. We also compare the quality of our knowledge base with the existing text-based knowledge bases, such as ConceptNet, ImageNet, and the like.
机译:随着基于图像的应用程序的普及,用户正在使用更复杂和复杂的查询来检索图像。我们提出了三种类型的复杂查询,即长,暧昧和摘要。每种类型的查询都有自己的特征/复杂性,从而导致不精确和不完整的图像检索。图像检索的现有方法无法处理此类查询的高复杂性。搜索引擎需要使用知识集成他们的图像检索过程,以获得有效检索的丰富语义。我们提出了一种框架,使用知识嵌入(IMReke)的图像检索,用于将知识与图像和查询嵌入,允许以更好的方式理解查询和图像的上下文。 imreke(ir_appach,知识_base)采用两个输入,即图像检索方法和知识库。它选择质量概念(具有来自知识库的质量概念(具有属性的概念,例如rarity,新性等),以提供通过图像检索方法利用的查询和图像的丰富语义表示。首次开发了利用概念的视觉和文本信息的有效知识库。我们广泛的实验表明,对于所有类型的复杂查询,所提出的框架显着提高了图像。在抽象查询的情况下,改善是显着的,这尚未在现有文献中明确处理。我们还将知识库的质量与现有的基于文本的知识库(例如ConceptNet,ImageNet等)进行比较。

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