Detecting Recurring Themes in Personal Media Collections

M. Das, A. Loui
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引用次数: 1

Abstract

The goal of this work is to automatically detect frequently occurring groups of media in a user's collection that have a unifying theme. These groups provide a narrative structure that ties in images that are temporally far apart and cannot be browsed easily. The media in the collection is analyzed by a variety of algorithms to generate metadata of different types. The media and associated metadata are represented as a transactional database, and frequent item set mining is employed to detect frequently occurring groups of images that share several metadata in common. It is expected that a user's primary picture-taking interests (e.g., baby, garden, school sports, etc.), will appear as groups based on some combination of underlying metadata. A confidence and interest measure relevant to the consumer domain is used to determine the quality of the frequent item sets and create a list of the top "themes" within the collection. We also detect annually recurring groups in multi-year collections, as these capture common themes such as birthdays and holidays. Because the detected recurring groups are strictly data-driven (with no a priori assumptions about a user's collection), they are customized to the type of content in specific user's collections. Experiments with large user collections show the usefulness of our approach.
检测个人媒体集合中重复出现的主题
这项工作的目标是自动检测用户集合中具有统一主题的频繁出现的媒体组。这些组提供了一种叙事结构,将暂时相距遥远、无法轻易浏览的图像联系在一起。集合中的媒体通过各种算法进行分析,生成不同类型的元数据。媒体和相关元数据表示为事务性数据库,频繁项集挖掘用于检测频繁出现的图像组,这些图像组共享多个公共元数据。预计用户的主要拍照兴趣(例如,婴儿,花园,学校体育等)将基于底层元数据的某些组合显示为组。使用与消费者领域相关的置信度和兴趣度量来确定频繁项目集的质量,并创建集合中最重要的“主题”列表。我们还在多年的集合中检测每年重复出现的组,因为这些组捕获了生日和假日等共同主题。由于检测到的重复出现组严格是数据驱动的(没有关于用户集合的先验假设),因此可以根据特定用户集合中的内容类型对它们进行定制。大型用户集合的实验显示了我们的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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