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Robust Video Object Tracking in Distributed Camera Networks

机译:分布式摄像机网络中的鲁棒视频对象跟踪

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摘要

We propose a robust video object tracking system in distributed camera networks. The main problem associated with wide-area surveillance is people to be tracked may exhibit dramatic changes on account of varied illuminations, viewing angles, poses and camera responses, under different cameras. We intend to construct a robust human tracking system across multiple cameras based on fully unsupervised online learning so that the camera link models among them can be learned online, and the tracked targets in every single camera can be accurately re-identified with both appearance cue and context information. We present three main parts of our research: an ensemble of invariant appearance descriptors, inter-camera tracking based on fully unsupervised online learning, and multiple-camera human tracking across non-overlapping cameras.;As for effective appearance descriptors, we present an appearance-based re-id framework, which uses an ensemble of invariant features to achieve robustness against partial occlusion, camera color response variation, and pose and viewpoint changes, etc. The proposed method not only solves the problems resulted from the changing human pose and viewpoint, with some tolerance of illumination changes but also can skip the laborious calibration effort and restriction.;We take an advantage of effective invariant features proposed above in the tracking. We present an inter-camera tracking method based on online learning, which systematically builds camera link model without any human intervention. The aim of inter-camera tracking is to assign unique IDs when people move across different cameras. Facilitated by the proposed two-phase feature extractor, which consists of two-way Gaussian mixture model fitting and couple features in phase I, followed by the holistic color, regional color/texture features in phase II, the proposed method can effectively and robustly identify the same person across cameras.;To build the complete tracking system, we propose a robust multiple-camera tracking system based on a two-step framework, the single-camera tracking algorithm is firstly performed in each camera to create trajectories of multi-targets, and then the inter-camera tracking algorithm is carried out to associate the tracks belonging to the same identity. Since inter-camera tracking algorithms derive the appearance and motion features by using single-camera tracking results, i.e., detected/tracked object and segmentation mask, inter-camera tracking performance highly depends on single-camera tracking performance. For single-camera tracking, we present multi-object tracking within a single camera that can adaptively refine the segmentation results based on multi-kernel feedback from preliminary tracking to handle the problems of object merging and shadowing. Besides, detection in local object region is incorporated to address initial occlusion when people appear in groups.
机译:我们提出了一种在分布式摄像机网络中强大的视频对象跟踪系统。与广域监视相关的主要问题是,在不同的摄像机下,由于不同的照明,视角,姿势和摄像机响应,要跟踪的人可能会发生巨大变化。我们打算基于完全无人监督的在线学习,在多台摄像机之间构建一个健壮的人类跟踪系统,以便可以在线学习其中的摄像机链接模型,并可以通过外观提示和外观准确地重新识别每台摄像机中的跟踪目标。上下文信息。我们介绍了研究的三个主要部分:不变外观描述符的集合,基于完全无监督的在线学习的摄像机间跟踪以及跨不重叠摄像机的多摄像机人类跟踪;关于有效的外观描述符,我们提出了一个外观的re-id框架,它使用不变特征的集合来实现针对部分遮挡,相机颜色响应变化以及姿势和视点变化等的鲁棒性。提出的方法不仅解决了人类姿势和视点变化引起的问题具有一定的光照变化容忍度,但也可以省去费力的校准工作和限制。;我们在跟踪中利用了上面提出的有效不变特征。我们提出了一种基于在线学习的摄像机间跟踪方法,该方法可以在没有任何人工干预的情况下系统地建立摄像机链接模型。摄像机间跟踪的目的是当人们在不同摄像机之间移动时分配唯一的ID。由所提出的两相特征提取器(由两阶段高斯混合模型拟合和第一阶段中的耦合特征组成,然后由第二阶段中的整体颜色,局部颜色/纹理特征组成)促进,该方法可以有效,可靠地识别为了构建完整的跟踪系统,我们提出了一个基于两步框架的健壮的多摄像机跟踪系统,首先在每台摄像机中执行单摄像机跟踪算法以创建多目标轨迹,然后执行摄像机间跟踪算法以关联属于同一身份的磁道。由于摄像机间跟踪算法通过使用单摄像机跟踪结果(即检测/跟踪的对象和分割蒙版)得出外观和运动特征,因此摄像机间跟踪性能高度依赖于单摄像机跟踪性能。对于单摄像机跟踪,我们提出了单摄像机内的多对象跟踪,它可以根据来自初步跟踪的多内核反馈来自适应地细化分割结果,以处理对象合并和阴影问题。此外,当人们成群出现时,结合了在局部物体区域中的检测以解决最初的遮挡。

著录项

  • 作者

    Lee, Younggun.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Information technology.;Computer engineering.;Engineering.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 94 p.
  • 总页数 94
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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