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Robust target tracking: Theory, applications and implementations .

机译:可靠的目标跟踪:理论,应用和实施。

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摘要

Due to increasing demand on force protection, intelligence gathering, and target systems in recent years, object tracking is receiving considerable attention in the research community. Tracking refers to the problem of estimating the trajectory of an object as it moves around a scene. Object tracking, in general, is a challenging problem. Difficulties in real world robust target tracking can arise due to low resolution, abrupt object motion, loss of information caused by projection of the 3D world on a 2D image, changing appearance patterns of both the object and the scene, non-rigid object structures, occlusions, noise in the image and camera motion. In this dissertation, different methodologies that exploit various visual cues are proposed to tackle the problem of robust target tracking.;A survey of the robust target tracking literature is presented using a taxonomy of existing algorithms along with some of the necessary background material to understand the contribution of this work. Using this taxonomy, the performances of the state-of-the-art object tracking techniques are compared and evaluated. A new robust online rigid tracking system, which is based on a Studentized Dynamical System framework, is introduced. The proposed system enables the incorporation of dense target features, has the capability of fine-tuning its parameters online and is robust enough to track very small, low contrast targets undergoing outlier disturbances. The robust tracking performance can be attributed to the application of a Student's t-distribution, which lowers the effect of outliers adaptively. Next, a novel synergistic approach for the robust contour tracking of a moving target undergoing non-rigid motion is introduced. The method is based on unifying two powerful segmentation tools: Geodesic Active Contours (GAC) and 3D Conditional Random Fields (CRF). This new contour tracking framework not only can efficiently fuse various image cues, but also offers an elegant inference process to adapt to changes in the scene. Experimental evaluations on typical contour tracking problems illustrate its accurate performance in delineating moving target boundaries. As a third contribution, a pixel level motion estimation method is developed by augmenting an L1 total variation framework with a new p-harmonic energy based regularization term. The estimation framework is based on using PDEs from the p-harmonic maps to smooth the optical flow angle and using an L1 total variation model to estimate the optical flow vector. The evaluation demonstrates that, by using the p-harmonic energy to explicitly introduce a smooth prior on the orientations of motion vectors, the proposed algorithm outperforms a recently published, top performing L1 total variation method, which shows the capability of the new regularization term in improving optical flow estimation performance, especially in the average angle error.;This work improves on previous performances of both rigid and non-rigid target tracking, and also identifies a new regularization tool for high accuracy optical flow estimation. The work also has impact in the design of new systems for unmanned reconnaissance and visual surveillance of remote targets.
机译:由于近年来对力保护,情报收集和目标系统的需求不断增长,对象跟踪在研究界引起了相当大的关注。跟踪是指估计对象在场景中移动时的轨迹的问题。通常,对象跟踪是一个具有挑战性的问题。现实世界中强大的目标跟踪可能会由于以下原因而出现:低分辨率,突然的物体运动,3D世界在2D图像上的投影导致信息丢失,物体和场景的外观模式发生变化,非刚性物体结构,遮挡,图像噪点和相机运动。本文提出了利用各种视觉线索的不同方法,以解决鲁棒目标跟踪问题。通过对现有算法的分类,结合一些必要的背景材料,对鲁棒目标跟踪文献进行了综述。这项工作的贡献。使用这种分类法,可以比较和评估最新对象跟踪技术的性能。介绍了一种基于学生动态系统框架的新型强大的在线刚性跟踪系统。所提出的系统能够合并密集的目标特征,具有在线微调其参数的能力,并且具有足够的鲁棒性以跟踪受到异常干扰的非常小的低对比度目标。强大的跟踪性能可以归因于学生t分布的应用,这可以自适应地降低异常值的影响。接下来,介绍了一种新颖的协同方法,用于对进行非刚性运动的运动目标进行鲁棒的轮廓跟踪。该方法基于统一的两个强大的分割工具:测地线活动轮廓(GAC)和3D条件随机场(CRF)。这种新的轮廓跟踪框架不仅可以有效地融合各种图像提示,而且还提供了一种优雅的推理过程来适应场景的变化。对典型轮廓跟踪问题的实验评估表明了其在描绘运动目标边界时的精确性能。作为第三贡献,通过用新的基于p谐波能量的正则项扩展L1总变化框架来开发像素级运动估计方法。估计框架基于使用p谐波图中的PDE平滑光流角,并使用L1总变化模型估计光流矢量。评估表明,通过使用p谐波能量在运动矢量的方向上明确引入平滑先验,所提出的算法优于最近发布的性能最高的L1总变分方法,该方法显示了新的正则项的能力。这项工作改进了以前的刚性和非刚性目标跟踪性能,并确定了一种用于高精度光流估计的新正则化工具。这项工作还影响了用于无人侦察和远程监视目标的新系统的设计。

著录项

  • 作者

    Gai, Jiading.;

  • 作者单位

    University of Notre Dame.;

  • 授予单位 University of Notre Dame.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 159 p.
  • 总页数 159
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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