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Image retrieval model based on weighted visual features determined by relevance feedback

机译:基于相关反馈确定的加权视觉特征的图像检索模型

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摘要

An accurate and rapid method is required to retrieve the overwhelming majority of digital images. To date, image retrieval methods include content-based retrieval and keyword-based retrieval, the former utilizing visual features such as color and brightness, and the latter utilizing keywords that describe the image. However, the effectiveness of these methods in providing the exact images the user wants has been under scrutiny. Hence, many researchers have been working on relevance feedback, a process in which responses from the user are given as feedback during the retrieval session in order to define a user's need and provide an improved result. Methods that employ relevance feedback, however, do have drawbacks because several pieces of feedback are necessary to produce an appropriate result, and the feedback information cannot be reused. In this paper, a novel retrieval model is proposed, which annotates an image with keywords and modifies the confidence level of the keywords in response to the user's feedback. In the proposed model, not only the images that have been given feedback, but also other images with visual features similar to the features used to distinguish the positive images are subjected to confidence modification. This allows for modification of a large number of images with relatively little feedback, ultimately leading to faster and more accurate retrieval results. An experiment was performed to verify the effectiveness of the proposed model, and the result demonstrated a rapid increase in recall and precision using the same amount of feedback. (c) 2008 Elsevier Inc. All rights reserved.
机译:需要一种准确而快速的方法来检索绝大多数的数字图像。迄今为止,图像检索方法包括基于内容的检索和基于关键字的检索,前者利用诸如颜色和​​亮度的视觉特征,而后者利用描述图像的关键词。然而,这些方法在提供用户想要的精确图像方面的有效性一直受到审查。因此,许多研究人员一直在进行相关性反馈,该过程是在检索会话期间将来自用户的响应作为反馈给出的,以便定义用户的需求并提供改进的结果。但是,采用相关反馈的方法确实存在缺陷,因为需要几条反馈才能产生适当的结果,并且反馈信息无法重复使用。本文提出了一种新颖的检索模型,该模型用关键字注释图像并响应用户的反馈修改关键字的置信度。在提出的模型中,不仅已给与反馈的图像,而且视觉特征与用于区分正图像的特征相似的其他图像也会经历置信度修改。这允许以相对较少的反馈修改大量图像,最终导致更快,更准确的检索结果。进行了一项实验,以验证所提出模型的有效性,结果表明,在使用相同数量的反馈的情况下,召回率和精度会迅速提高。 (c)2008 Elsevier Inc.保留所有权利。

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