基于共现网络的概念学习图像检索

Linan Feng, B. Bhanu
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引用次数: 1

摘要

本文研究了语义图像检索中的概念学习问题。在我们的系统中引入了两种语义概念:个体概念和场景概念。单个概念在语义词汇表中显式提供,语义词汇表是图像数据库中的标签或注释。场景概念是更高层次的概念,它被定义为单个概念共同出现的潜在模式。场景概念的存在是因为一些单独的概念经常在不同的图像中共同出现。这类似于人类的学习,在理解更复杂的想法之前,理解更简单的想法通常是有用的。与单个概念相比,场景概念可能具有更强的辨别能力,但需要找到它们的方法。提出了一种新的场景概念提取方法。它是基于一个带有检测到的群落结构属性的加权概念共现网络(图)。以所提出的个体和场景概念签名作为图像语义描述符,描述了一个图像相似度比较与检索框架。在一个公开可用的数据集上进行了大量的实验,以证明我们的概念学习和语义图像检索框架的有效性。
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Concept Learning with Co-occurrence Network for Image Retrieval
This paper addresses the problem of concept learning for semantic image retrieval. Two types of semantic concepts are introduced in our system: the individual concept and the scene concept. The individual concepts are explicitly provided in a vocabulary of semantic words, which are the labels or annotations in an image database. Scene concepts are higher level concepts which are defined as potential patterns of co occurrence of individual concepts. Scene concepts exist since some of the individual concepts co-occur frequently across different images. This is similar to human learning where understanding of simpler ideas is generally useful prior to developing more sophisticated ones. Scene concepts can have more discriminative power compared to individual concepts but methods are needed to find them. A novel method for deriving scene concepts is presented. It is based on a weighted concept co-occurrence network (graph) with detected community structure property. An image similarity comparison and retrieval framework is described with the proposed individual and scene concept signature as the image semantic descriptors. Extensive experiments are conducted on a publicly available dataset to demonstrate the effectiveness of our concept learning and semantic image retrieval framework.
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