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Combat identification with sequential observations, rejection option, and out-of-library targets.

机译:通过顺序观察,拒绝选项和库外目标与识别作战。

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摘要

Combat target identification (CID) is the process by which detected objects are characterized pursuant to military action. Errors in CID such as mis-labeling targets and non-targets carry significant costs. Fusing data from multiple sources and allowing a rejection, or non-declare, option can improve CID error rates. This research extends a mathematical framework that selects the optimal sensor ensemble and fusion method across multiple decision thresholds subject to warfighter constraints. The formulation includes treatment of exemplars from target classes on which the CID system classifiers are not trained (out-of-library classes), and it enables the warfighter to optimize a CID system without explicit enumeration of classifier error costs.; A time-series classifier design methodology is developed and applied, resulting in a multi-variate Gaussian hidden Markov model (HMM) with a specially constructed hidden state space. The extended CID framework is used to compete the HMM-based CID system against a template-based CID system. The assessment uses a real world synthetic aperture radar (SAR) data collection comprised of ten in-library target classes and five out-of-library target classes. The framework evaluates competing classifier systems that use multiple fusion methods, including neural network fusion and label fusion, varied prior probabilities of targets and non-targets, varied correlation between multiple sensor looks, and varied levels of target pose estimation error. Also, an on-line target pose estimator is developed using principal component analysis of masked target SAR images. This estimator validates experimental assumptions on target pose prior to classification.; The CID system assessment using the extended framework reveals larger feasible operating regions for the HMM-based classifier across experimental settings. In some cases the HMM-based classifier yields a feasible region that is 25% of the threshold operating space versus 1% for the template-based classifier. Similar performance results are obtained for rule-based label fusion and the more complex neural network fusion and are explained by the new ability to independently set classifier thresholds with the label fusion method.
机译:作战目标识别(CID)是根据军事行动对检测到的物体进行表征的过程。 CID中的错误(例如,错误标记目标和非目标)会带来巨大的成本。融合来自多个来源的数据并允许拒绝或不声明选项可以提高CID错误率。这项研究扩展了一个数学框架,该框架可以根据作战人员的约束跨多个决策阈值选择最佳的传感器集成和融合方法。该表述包括对未训练CID系统分类器的目标分类中的样本的处理(库外分类),并使作战人员无需明确枚举分类器错误成本即可优化CID系统。开发并应用了时间序列分类器设计方法,从而生成了具有特殊构造的隐藏状态空间的多元高斯隐藏马尔可夫模型(HMM)。扩展的CID框架用于使基于HMM的CID系统与基于模板的CID系统竞争。该评估使用了一个现实世界的合成孔径雷达(SAR)数据收集,该数据收集包含10个库内目标类别和5个库外目标类别。该框架评估使用多种融合方法的竞争性分类器系统,包括神经网络融合和标签融合,目标和非目标的先验概率变化,多个传感器外观之间的变化相关性以及目标姿态估计误差的变化水平。此外,使用被掩蔽目标SAR图像的主成分分析开发了在线目标姿态估计器。该估计器在分类之前验证目标姿势的实验假设。使用扩展框架的CID系统评估揭示了跨实验设置的基于HMM的分类器更大的可行操作区域。在某些情况下,基于HMM的分类器产生的可行区域为阈值操作空间的25%,而基于模板的分类器为1%。对于基于规则的标签融合和更复杂的神经网络融合,可以获得类似的性能结果,并且可以通过使用标签融合方法独立设置分类器阈值的新功能来解释。

著录项

  • 作者

    Albrecht, Timothy W.;

  • 作者单位

    Air Force Institute of Technology.;

  • 授予单位 Air Force Institute of Technology.;
  • 学科 Operations Research.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 229 p.
  • 总页数 229
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 运筹学;
  • 关键词

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