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Interactive Content-Based Image Retrieval Using Relevance Feedback

机译:相关反馈的基于内容的交互式图像检索

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Database search engines are generally used in a one-shot fashion in which a user provides query information to the system and, in return, the system provides a number of database instances to the user. A relevance feedback system allows the user to indicate to the system which of these instances are desirable, or relevant, and which are not. Based on this feedback, the system modifies its retrieval mechanism in an attempt to return a more desirable instance set to the user. In this paper, we present a relevance feedback technique that uses decision trees to learn a common thread among instances marked relevant. We apply our technique in a preexisting content-based image retrieval (CBIR) system that is used to access high resolution computed tomographic images of the human lung. We compare our approach to a commonly used relevance feedback technique for CBIR, which modifies the weights of a K nearest neighbor retriever. The results show that our approach achieves better retrieval as measured in off-line experiments and as judged by a radiologist who is a lung specialist.
机译:数据库搜索引擎通常以单次使用的方式使用,在这种方式中,用户向系统提供查询信息,而系统则向用户提供许多数据库实例。相关性反馈系统允许用户向系统指示这些实例中的哪些是理想的或相关的,而哪些不是理想的。基于此反馈,系统会修改其检索机制,以尝试将更理想的实例集返回给用户。在本文中,我们提出了一种相关性反馈技术,该技术使用决策树来学习标记为相关的实例之间的公共线程。我们将我们的技术应用于现有的基于内容的图像检索(CBIR)系统中,该系统用于访问人肺的高分辨率计算机断层图像。我们将我们的方法与CBIR的常用相关性反馈技术进行了比较,该技术修改了K最近邻检索器的权重。结果表明,通过离线实验测量并由作为肺专科医生的放射科医生判断,我们的方法可实现更好的检索。

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