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Ontology-based context representation and reasoning for object tracking and scene interpretation in video

机译:视频中基于本体的上下文表示和对象跟踪和场景解释的推理

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摘要

Computer vision research has been traditionally focused on the development of quantitative techniques to calculate the properties and relations of the entities appearing in a video sequence. Most object tracking methods are based on statistical methods, which often result inadequate to process complex scenarios. Recently, new techniques based on the exploitation of contextual information have been proposed to overcome the problems that these classical approaches do not solve. The present paper is a contribution in this direction: we propose a Computer Vision framework aimed at the construction of a symbolic model of the scene by integrating tracking data and contextual information. The scene model, represented with formal ontologies, supports the execution of reasoning procedures in order to: (i) obtain a high-level interpretation of the scenario; (ii) provide feedback to the low-level tracking procedure to improve its accuracy and performance. The paper describes the layered architecture of the framework and the structure of the knowledge model, which have been designed in compliance with the JDL model for Information Fusion. We also explain how deductive and abductive reasoning is performed within the model to accomplish scene interpretation and tracking improvement. To show the advantages of our approach, we develop an example of the use of the framework in a video-surveillance application.
机译:传统上,计算机视觉研究一直专注于定量技术的发展,以计算视频序列中出现的实体的属性和关系。大多数对象跟踪方法都是基于统计方法的,这通常导致不足以处理复杂的场景。近来,已经提出了基于上下文信息开发的新技术来克服这些经典方法不能解决的问题。本文是朝这个方向做出的贡献:我们提出了一个计算机视觉框架,旨在通过集成跟踪数据和上下文信息来构建场景的符号模型。以正式本体表示的场景模型支持推理程序的执行,以便:(i)对场景进行高级解释; (ii)向低级别跟踪程序提供反馈,以提高其准确性和性能。本文描述了框架的分层体系结构和知识模型的结构,这些层级结构是根据信息融合的JDL模型设计的。我们还解释了如何在模型中执行演绎推理和演绎推理,以完成场景解释和跟踪改进。为了展示我们方法的优势,我们开发了一个在视频监控应用程序中使用该框架的示例。

著录项

  • 来源
    《Expert Systems with Application》 |2011年第6期|p.7494-7510|共17页
  • 作者单位

    Department of Computer Science, Applied Artificial Intelligence Croup, University Carlos III of Madrid, Av. de la Universidad Carlos III, 22, 28270 Colmenarejo, Madrid, Spain;

    Department of Computer Science, Applied Artificial Intelligence Croup, University Carlos III of Madrid, Av. de la Universidad Carlos III, 22, 28270 Colmenarejo, Madrid, Spain;

    Department of Computer Science, Applied Artificial Intelligence Croup, University Carlos III of Madrid, Av. de la Universidad Carlos III, 22, 28270 Colmenarejo, Madrid, Spain;

    Department of Computer Science, Applied Artificial Intelligence Croup, University Carlos III of Madrid, Av. de la Universidad Carlos III, 22, 28270 Colmenarejo, Madrid, Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    object tracking; information fusion; context aware systems; ontologies; rules;

    机译:对象跟踪;信息融合;上下文感知系统;本体;规则;

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