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Shot-based Video Retrieval With Optical Flow Tensor And Hmms

机译:具有光流张量和Hmms的基于镜头的视频检索

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摘要

Video retrieval and indexing research aims to efficiently and effectively manage very large video databases, e.g., CCTV records, which is a key component in video-based object and event analysis. In this paper, for the purpose of video retrieval, we propose a novel method to represent video data by developing an optical flow tensor (OFT) and incorporating hidden Markov models (HMMs). As video is content-sensitive and normally carries rich motion information of objects, optical flow field is first employed to estimate such motion. Then, a shot HMMs tree is built to model video clips in different levels in a database. Experimental results demonstrate that the newly developed method inherits advantages of both optical flow and HMMs in video representation. With the newly developed video representation, in video retrieval and indexing tasks, no need to exhaustively compare a query video shot with all video shot records in the database. Moreover, the novel representation method works well when linear discriminant analysis (LDA) is utilized to reduce the feature dimensionality and further speed up the retrieval procedure.
机译:视频检索和索引研究旨在有效地管理非常大的视频数据库,例如CCTV记录,这是基于视频的对象和事件分析的关键组成部分。在本文中,出于视频检索的目的,我们提出了一种通过开发光流张量(OFT)并结合隐马尔可夫模型(HMM)来表示视频数据的新方法。由于视频是内容敏感的,并且通常携带对象的丰富运动信息,因此首先采用光流场来估计这种运动。然后,建立一个镜头HMM树,以对数据库中不同级别的视频剪辑进行建模。实验结果表明,新开发的方法在视频表示中继承了光流和HMM的优点。使用新开发的视频表示,在视频检索和索引任务中,无需详尽地将查询的视频镜头与数据库中的所有视频镜头记录进行比较。此外,当利用线性判别分析(LDA)来减少特征维数并进一步加快检索过程时,这种新颖的表示方法效果很好。

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