Quicklook2: An Integrated Multimedia System

G. Ciocca, I. Gagliardi, R. Schettini
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引用次数: 47

Abstract

tion retrieval engine of Quicklook 2 . Quicklook 2 allows the user to query image and multimedia databases with the aid of sample images, or an impromptu sketch and/or textual descriptions, and progressively refine the system’s response by indicating the relevance, or non-relevance of the retrieved items. The major innovation of the system is its relevance feedback mechanism that performs a statistical analysis of both the image and textual feature distributions of the retrieved items the user has judged relevant, or not relevant to identify what features the user has taken into account (and to what extent) in formulating this judgement, and then weigh their influence in the overall evaluation of similarity, as well as in the formulation of a new, single query that better expresses the user’s multimedia information needs. Another important contribution is the design and integration with the relevance feedback mechanism of an indexing scheme based on triangle inequality to improve retrieval efficiency. The performance of the system is illustrated with examples from various application domains and for different types of queries (target search as well as similarity search). ( 2001 Academic Press
Quicklook2:集成多媒体系统
Quicklook的信息检索引擎Quicklook 2允许用户在样本图像的帮助下查询图像和多媒体数据库,或即兴草图和/或文本描述,并通过指示检索项目的相关性或非相关性逐步改进系统的响应。该系统的主要创新是其相关性反馈机制,该机制对用户判断相关或不相关的检索项目的图像和文本特征分布进行统计分析,以确定用户在制定此判断时考虑了哪些特征(以及在何种程度上),然后权衡它们在总体相似性评估中的影响,以及在制定新的,单一查询更能表达用户的多媒体信息需求。另一个重要贡献是设计并集成了基于三角不等式的索引方案的相关反馈机制,提高了检索效率。通过来自不同应用领域和不同查询类型(目标搜索和相似度搜索)的示例来说明系统的性能。(2001年学术出版社)
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