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Discovering Video Clusters from Visual Features and Noisy Tags

机译:从视觉功能和嘈杂的标签发现视频群集

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We present an algorithm for automatically clustering tagged videos. Collections of tagged videos are commonplace, however, it is not trivial to discover video clusters therein. Direct methods that operate on visual features ignore the regularly available, valuable source of tag information. Solely clustering videos on these tags is error-prone since the tags are typically noisy. To address these problems, we develop a structured model that considers the interaction between visual features, video tags and video clusters. We model tags from visual features, and correct noisy tags by checking visual appearance consistency. In the end, videos are clustered from the refined tags as well as the visual features. We learn the clustering through a max-margin framework, and demonstrate empirically that this algorithm can produce more accurate clustering results than baseline methods based on tags or visual features, or both. Further, qualitative results verify that the clustering results can discover sub-categories and more specific instances of a given video category.
机译:我们提出了一种自动聚类标记视频的算法。标记视频的集合是普遍的,但是,在其中发现视频群集并不普遍。在视觉功能上运行的直接方法忽略了定期可用的,有价值的标签信息来源。由于标记通常是嘈杂的,因此在这些标记上的群集视频是错误的。为了解决这些问题,我们开发了一种结构化模型,它考虑了视觉功能与视频群集之间的交互。我们通过检查视觉外观一致性来模拟从视觉功能的标签,并纠正嘈杂的标签。最终,视频从精细标记和视觉功能群集。我们通过MAX-RAMIN框架学习群集,并经验证明该算法可以基于标签或视觉功能或两者产生比基线方法更准确的聚类结果。此外,定性结果验证聚类结果是否可以发现给定视频类别的子类别和更具体的实例。

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