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Advanced machine learning approaches for target detection, tracking and recognition.

机译:用于目标检测,跟踪和识别的高级机器学习方法。

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摘要

This dissertation addresses the key technical components of an Automatic Target Recognition (ATR) system namely: target detection, tracking, learning and recognition. Novel solutions are proposed for each component of the ATR system based on several new advances in the field of computer vision and machine learning. Firstly, we introduce a simple and elegant feature, RelCom, and a boosted feature selection method to achieve a very low computational complexity target detector. Secondly, we present a particle filter based target tracking algorithm that uses a quad histogram based appearance model along with online feature selection. Further, we improve the tracking performance by means of online appearance learning where appearance learning is cast as an Adaptive Kalman filtering (AKF) problem which we formulate using both covariance matching and, for the first time in a visual tracking application, the recent autocovariance least-squares (ALS) method. Then, we introduce an integrated tracking and recognition system that uses two generative models to accommodate the pose variations and maneuverability of different ground targets. Specifically, a tensor-based generative model is used for multi-view target representation that can synthesize unseen poses, and can be trained from a small set of signatures. In addition, a target-dependent kinematic model is invoked to characterize the target dynamics. Both generative models are integrated in a graphical framework for joint estimation of the target's kinematics, pose, and discrete valued identity. Finally, for target recognition we advocate the concept of a continuous identity manifold that captures both inter-class and intra-class shape variability among training targets. A hemispherical view manifold is used for modeling the view-dependent appearance. In addition to being able to deal with arbitrary view variations, this model can determine the target identity at both class and sub-class levels, for targets not present in the training data. The proposed components of the ATR system enable us to perform low computational complexity target detection with low false alarm rates, robust tracking of targets under challenging circumstances and recognition of target identities at both class and sub-class levels. Experiments on real and simulated data confirm the performance of the proposed components with promising results.
机译:本文研究了自动目标识别(ATR)系统的关键技术组件:目标检测,跟踪,学习和识别。基于计算机视觉和机器学习领域的一些新进展,针对ATR系统的每个组件提出了新颖的解决方案。首先,我们介绍一种简单而优雅的功能RelCom,以及一种增强的功能选择方法,以实现非常低的计算复杂度目标检测器。其次,我们提出一种基于粒子过滤器的目标跟踪算法,该算法使用基于四边形直方图的外观模型以及在线特征选择。此外,我们通过在线外观学习提高了跟踪性能,其中,外观学习被转换为自适应卡尔曼滤波(AKF)问题,该问题我们使用协方差匹配,并且在视觉跟踪应用中首次首次将最近的自协方差最小化。 -平方(ALS)方法。然后,我们介绍一个集成的跟踪和识别系统,该系统使用两个生成模型来适应不同地面目标的姿态变化和可操作性。具体来说,基于张量的生成模型用于多视图目标表示,该模型可以合成看不见的姿势,并可以从少量签名中进行训练。另外,调用依赖于目标的运动学模型来表征目标动力学。两种生成模型都集成在图形框架中,用于联合估算目标的运动学,姿势和离散值身份。最后,对于目标识别,我们提倡使用连续身份流形的概念,该身份流形同时捕获训练目标之间的类间和类内形状变异。半球形视图歧管用于对依赖于视图的外观进行建模。除了能够处理任意视图变化之外,该模型还可以针对训练数据中不存在的目标确定类别和子类别级别的目标身份。 ATR系统的拟议组件使我们能够以较低的误报率执行低计算复杂度的目标检测,在具有挑战性的情况下对目标进行强大的跟踪,并在类别和子类别级别上识别目标身份。在真实和模拟数据上进行的实验证实了所提出组件的性能,并取得了令人鼓舞的结果。

著录项

  • 作者

    Venkataraman, Vijay.;

  • 作者单位

    Oklahoma State University.;

  • 授予单位 Oklahoma State University.;
  • 学科 Engineering Electronics and Electrical.;Computer Science.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 190 p.
  • 总页数 190
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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