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Video Content Analysis Using the Video Time Density Function and Statistical Models.

机译:使用视频时间密度函数和统计模型进行视频内容分析。

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摘要

As an interesting, meaningful, and challenging topic, video content analysis is to find meaningful structure and patterns from visual data for the purpose of efficient indexing and mining of videos. In this thesis, a new theoretical framework on video content analysis using the video time density function (VTDF) and statistical models is proposed. The proposed framework tries to tackle the problems in video content analysis based on its semantic information from three perspectives: video summarization, video similarity measure, and video event detection. In particular, the main research problems are formulated mathematically first. Two kinds of video data modeling tools are then presented to explore the spatiotemporal characteristics of video data, the independent component analysis (ICA)-based feature extraction and the VTDF. Video summarization is categorized into two types: static and dynamic. Two new methods are proposed to generate the static video summary. One is hierarchical key frame tree to summarize video content hierarchically. Another is vector quantization-based method using Gaussian mixture (GM) and ICA mixture (ICAM) to explore the characteristics of video data in the spatial domain to generate a compact video summary. The VTDF is then applied to develop several approaches for content-based video analysis. In particular, VTDF-based temporal quantization and statistical models are proposed to summarize video content dynamically. VTDF-based video similarity measure model is to measure the similarity between two video sequences. VTDF-based video event detection method is to classify a video into predefined events. Video players with content-based fast-forward playback support are designed, developed, and implemented to demonstrate the feasibility of the proposed methods. Given the richness of literature in effective and efficient information coding and representation using probability density function (PDF), the VTDF is expected to serve as a foundation of video content representation and more video content analysis methods will be developed based on the VTDF framework.
机译:视频内容分析是一个有趣,有意义且具有挑战性的主题,目的是从视觉数据中找到有意义的结构和模式,以有效地索引和挖掘视频。本文提出了一种基于视频时间密度函数(VTDF)和统计模型的视频内容分析新理论框架。所提出的框架试图基于其语义信息从三个方面解决视频内容分析中的问题:视频摘要,视频相似性度量和视频事件检测。特别是,首先要对主要研究问题进行数学公式化。然后,提出了两种视频数据建模工具来探索视频数据的时空特征,即基于独立成分分析(ICA)的特征提取和VTDF。视频摘要分为两种类型:静态和动态。提出了两种新方法来生成静态视频摘要。一种是分层关键帧树,用于分层总结视频内容。另一种是基于矢量量化的方法,使用高斯混合(GM)和ICA混合(ICAM)来探索空间域中视频数据的特征,以生成紧凑的视频摘要。然后将VTDF应用于开发几种基于内容的视频分析方法。特别是,提出了基于VTDF的时间量化和统计模型来动态总结视频内容。基于VTDF的视频相似性度量模型用于度量两个视频序列之间的相似性。基于VTDF的视频事件检测方法是将视频分类为预定义的事件。设计,开发和实现了具有基于内容的快进播放支持的视频播放器,以演示所提出方法的可行性。由于使用概率密度函数(PDF)进行有效,高效的信息编码和表示的文献丰富,因此VTDF有望作为视频内容表示的基础,并且将基于VTDF框架开发更多的视频内容分析方法。

著录项

  • 作者

    Jiang, Junfeng.;

  • 作者单位

    Ryerson University (Canada).;

  • 授予单位 Ryerson University (Canada).;
  • 学科 Statistics.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 160 p.
  • 总页数 160
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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