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Content-Based Multimedia Retrieval in the Presence of Unknown User Preferences

机译:存在未知用户首选项的基于内容的多媒体检索

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Content-based multimedia retrieval requires an appropriate similarity model which reflects user preferences. When these preferences are unknown or when the structure of the data collection is unclear, retrieving the most preferable objects the user has in mind is challenging, as the notion of similarity varies from data to data, from task to task, and ultimately from user to user. Based on a specific query object and unknown user preferences, retrieving the most similar objects according to some default similarity model does not necessarily include the most preferable ones. In this work, we address the problem of content-based multimedia retrieval in the presence of unknown user preferences. Our idea consists in performing content-based retrieval by considering all possibilities in a family of similarity models simultaneously. To this end, we propose a novel content-based retrieval approach which aims at retrieving all potentially preferable data objects with respect to any preference setting in order to meet individual user requirements as much as possible. We demonstrate that our approach improves the retrieval performance regarding unknown user preferences by more than 57% compared to the conventional retrieval approach.
机译:基于内容的多媒体检索需要适当的相似性模型,以反映用户的喜好。当这些首选项未知或数据收集的结构不清楚时,检索用户心目中最喜欢的对象将面临挑战,因为相似性的概念因数据而异,因任务而异,最终因用户而异。用户。基于特定的查询对象和未知的用户偏好,根据某些默认相似性模型检索最相似的对象并不一定包括最喜欢的对象。在这项工作中,我们解决了在未知用户首选项存在的情况下基于内容的多媒体检索的问题。我们的想法是通过同时考虑一系列相似性模型中的所有可能性来执行基于内容的检索。为此,我们提出了一种新颖的基于内容的检索方法,该方法旨在针对任何首选项设置检索所有可能更可取的数据对象,以便尽可能满足各个用户的需求。我们证明,与传统检索方法相比,我们的方法将未知用户偏好下的检索性能提高了57%以上。

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