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Shot-based object retrieval from video with compressed Fisher Vectors

机译:使用压缩的Fisher向量从视频中基于镜头的对象检索

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This paper addresses the problem of retrieving those shots from a database of video sequences that match a query image. Existing architectures match the images using a high-level representation of local features extracted from the video database, and are mainly based on Bag ofWords model. Such architectures lack however the capability to scale up to very large databases. Recently, Fisher Vectors showed promising results in large scale image retrieval problems, but it is still not clear how they can be best exploited in video-related applications. In our work, we use compressed Fisher Vectors to represent the video shots and we show that inherent correlation between video frames can be effectively exploited. Experiments show that our proposed system achieves better performance while having lower computational requirements than similar architectures.
机译:本文解决了从匹配查询图像的视频序列数据库中检索这些镜头的问题。现有的体系结构使用从视频数据库中提取的局部特征的高级表示来匹配图像,并且主要基于Bag of Words模型。但是,这样的体系结构缺乏扩展到非常大的数据库的能力。最近,Fisher Vectors在大规模图像检索问题上显示出令人鼓舞的结果,但仍不清楚如何在视频相关应用程序中最好地利用它们。在我们的工作中,我们使用压缩的Fisher向量表示视频镜头,并且表明可以有效利用视频帧之间的固有相关性。实验表明,与同类体系结构相比,我们提出的系统具有更好的性能,同时对计算的要求更低。

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