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Towards accurate group activity analysis in videos: Robust saliency detection and effective feature modeling.

机译:进行视频中准确的小组活动分析:强大的显着性检测和有效的特征建模。

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摘要

Human activity analysis is an important area of computer vision research today. The goal of human activity analysis is to automatically analyze ongoing activities from an unknown video. The ability to analyze complex human activities from videos has many important applications, such as smart camera system, video surveillance, etc. However, it is still far from an off-the-shelf system. There are many challenging problems and it is still an active research area. This dissertation focuses on addressing two problems: various camera motions and effective modeling of group behaviors.;We propose a unified and robust framework to detect salient motions from diverse types of videos. Given a video sequence that is recorded from either a stationary or moving camera, our algorithm is able to detect the salient motion regions. The model is inspired by two observations: 1) background motion caused by orthographic cameras lies in a low rank subspace, and 2) pixels belonging to one trajectory tend to group together. Based on these two observations, we introduce a new model using both low rank and group sparsity constraints. It is able to robustly decompose a motion trajectory matrix into foreground and background ones. Extensive experiments demonstrate very competitive performance on both synthetic data and real videos.;After salient motion detection, a new method is proposed to model group behaviors in video sequences. This approach effectively models group activities based on social behavior analysis. Different from previous work that uses independent local features, our method explores the relationships between the current behavior state of a subject and its actions. An interaction energy potential function is proposed to represent the current behavior state of a subject, and velocity is used as its actions. Our method does not depend on human detection, so it is robust to detection errors. Instead, tracked salient points are able to provide a good estimation of modeling group interaction. We evaluate our algorithm in two datasets: UMN and BEHAVE. Experimental results show its promising performance against the state-of-art methods.
机译:人类活动分析是当今计算机视觉研究的重要领域。人类活动分析的目标是自动分析未知视频中正在进行的活动。从视频分析复杂的人类活动的能力具有许多重要的应用,例如智能相机系统,视频监控等。但是,它离现成的系统还很远。存在许多具有挑战性的问题,它仍然是一个活跃的研究领域。本文着重解决两个问题:各种摄像机运动和群体行为的有效建模。我们提出了一个统一而强大的框架来检测来自各种类型视频的显着运动。给定从固定或移动摄像机录制的视频序列,我们的算法能够检测到明显的运动区域。该模型的灵感来自两个观察结果:1)正交摄影机引起的背景运动位于低秩子空间中,以及2)属于一个轨迹的像素往往会聚集在一起。基于这两个观察,我们引入了一个同时使用低秩和稀疏性约束的新模型。它能够将运动轨迹矩阵稳健地分解为前景和背景。大量的实验证明了在合成数据和真实视频上都具有非常好的竞争性能。;在显着运动检测之后,提出了一种对视频序列中的组行为建模的新方法。该方法基于社会行为分析有效地为团体活动建模。与以前使用独立局部特征的工作不同,我们的方法探索了对象当前行为状态与其动作之间的关系。提出了一种相互作用能势函数来表示对象的当前行为状态,并使用速度作为其作用。我们的方法不依赖于人工检测,因此对检测错误具有鲁棒性。取而代之的是,跟踪的显着点能够为建模组交互提供良好的估计。我们在两个数据集中评估我们的算法:UMN和行为。实验结果表明,它与最先进的方法相比具有广阔的前景。

著录项

  • 作者

    Cui, Xinyi.;

  • 作者单位

    Rutgers The State University of New Jersey - New Brunswick.;

  • 授予单位 Rutgers The State University of New Jersey - New Brunswick.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 85 p.
  • 总页数 85
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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