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Multi-object tracking, event modeling, and activity discovery in video sequences.

机译:视频序列中的多对象跟踪,事件建模和活动发现。

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摘要

One of the main goals of computer vision is video understanding, where objects in the video are detected, tracked, and their behavior is analyzed. In this dissertation, several key problems in video understanding are addressed, focusing on video surveillance applications.; Moving target detection and tracking is one of the most fundamental tasks in visual surveillance. A new moving target detection method is proposed where the temporal variance is used as a measure for characterizing object motion. Our method is experimentally shown to produce high detection rates while keeping low false positive rates.; In tracking multiple objects, it is essential to correctly associate targets and measurements. We describe an efficient multi-object tracking approach that maintains multiple hypotheses over time regarding the association of targets and measurements. The data association problem is solved by a combinatorial optimization technique which finds the most likely association allowing track initiation, termination, merge, and split. Experimental results show that our method tracks through varying degrees of interactions among the targets with high success rate.; Recognizing complex high-level events requires an explicit model of the structure of the events. Our approach uses attribute grammar for representing such event, which formally specifies the syntax of the symbols and the conditions on the attributes. Events are recognized using an extension of the Earley parser that handles attributes and concurrent event threads. Various examples of recognizing specific events of interest and detecting abnormal events are demonstrated using real data.; Unsupervised methods for learning human activities have been largely based on clustering trajectories from a given scene. However, conventional clustering algorithms are not suitable for scenes that have many outlier trajectories. We describe a method for finding only salient groups of trajectories, using the probability of trajectories accidentally forming a group as the measure of significance of the group. The grouping algorithm finds groups that maximizes significance, while automatically determining the threshold for significance. We validate our approach on real data and analyze its performance using simulated data.
机译:视频视觉是计算机视觉的主要目标之一,可以检测,跟踪视频中的对象并对其行为进行分析。本文主要针对视频监控应用,解决了视频理解中的几个关键问题。运动目标的检测和跟踪是视觉监视中最基本的任务之一。提出了一种新的运动目标检测方法,其中将时间方差用作表征物体运动的度量。实验证明,我们的方法产生高检测率,同时保持较低的假阳性率。在跟踪多个对象时,正确关联目标和测量至关重要。我们描述了一种有效的多对象跟踪方法,该方法可以随着时间的推移在目标和度量的关联上维持多个假设。数据关联问题是通过组合优化技术解决的,该技术找到了最可能的关联,允许进行磁道初始化,终止,合并和拆分。实验结果表明,该方法跟踪目标之间不同程度的交互,成功率很高。识别复杂的高级事件需要事件结构的显式模型。我们的方法使用属性语法来表示此类事件,它正式指定了符号的语法以及属性上的条件。使用Earley解析器的扩展来识别事件,该扩展器处理属性和并发事件线程。使用真实数据演示了识别感兴趣的特定事件并检测异常事件的各种示例。用于学习人类活动的无监督方法主要是基于给定场景中的聚类轨迹。但是,常规的聚类算法不适用于具有许多离群轨迹的场景。我们描述了一种仅查找轨迹的显着组的方法,使用轨迹意外形成组的概率作为组的重要性的度量。分组算法会找到使重要性最大化的组,同时自动确定重要性阈值。我们对真实数据进行验证,并使用模拟数据分析其性能。

著录项

  • 作者

    Joo, Seong-Wook.;

  • 作者单位

    University of Maryland, College Park.$bComputer Science.;

  • 授予单位 University of Maryland, College Park.$bComputer Science.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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