首页> 外文会议>Conference on multimedia content access: Algorithms and systems III; 20090121-22; San Jose, CA(US) >Semantic Classification, Low Level Features and Relevance Feedback for Content-Based Image Retrieval
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Semantic Classification, Low Level Features and Relevance Feedback for Content-Based Image Retrieval

机译:基于内容的图像检索的语义分类,低级特征和相关反馈

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摘要

Although traditional content-based retrieval systems have been successfully employed in many multimedia applications, the need for explicit association of higher concepts to images has been a pressing demand from users. Many research works have been conducted focusing on the reduction of the semantic gap between visual features and the semantics of the image content. In this paper we present a mechanism that combines broad high level concepts and low level visual features within the framework of the QuickLook content-based image retrieval system. This system also implements a relevance feedback algorithm to learn users' intended query from positive and negative image examples. With the relevance feedback mechanism, the retrieval process can be efficiently guided toward the semantic or pictorial contents of the images by providing the system with the suitable examples. The qualitative experiments performed on a database of more than 46,000 photos downloaded from the Web show that the combination of semantic and low level features coupled with a relevance feedback algorithm, effectively improve the accuracy of the image retrieval sessions.
机译:尽管传统的基于内容的检索系统已成功用于许多多媒体应用程序中,但对更高概念与图像的显式关联的需求一直是用户的迫切需求。已经进行了许多研究工作,着重于减小视觉特征和图像内容的语义之间的语义鸿沟。在本文中,我们提出了一种在QuickLook基于内容的图像检索系统框架内结合了广泛的高级概念和低级视觉特征的机制。该系统还实现了相关性反馈算法,以从正负图像示例中学习用户的预期查询。通过相关性反馈机制,可以通过为系统提供适当的示例,将检索过程有效地引导到图像的语义或图片内容。在从Web下载的超过46,000张照片的数据库上进行的定性实验表明,语义和低级特征的结合以及相关性反馈算法有效地提高了图像检索会话的准确性。

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