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An information-theoretic approach to sonar automatic target recognition.

机译:一种用于声纳自动目标识别的信息理论方法。

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摘要

Multistage automatic target recognition (ATR) algorithms provide an effective means for locating items of interest in sonar imagery by successively reducing the volume of data at each stage in order to produce a concise list of possible target locations. Traditionally, the stages in these algorithms are designed using statistical methods that are often based on a priori assumptions about the input data distributions. By extending recent advances in information-theoretic learning (ITL), this dissertation applies concepts of information theory to the feature extraction stage of the multistage sonar ATR paradigm. By incorporating information-theoretic performance metrics, the approach is not dependent on a priori statistical assumptions about the data distributions.; The widespread application of ITL has likely been hindered by two phenomena: computational complexity and difficulty of use. This dissertation addresses both of these issues in order to increase the applicability of ITL. First, the computation of the ITL criteria is optimized for more efficient evaluation. Next, training efficiency is improved by tailoring some of the most popular advanced training algorithms for compatibility with ITL systems. To further improve training efficiency, a batch training approach to ITL is presented that reduces the quadratic complexity of the criterion. Finally, various properties of the information-theoretic criteria are investigated in order to achieve a better understanding of the ITL process in support of easier implementation.; These advances in ITL efficiency and understanding are then applied to address the problem of sonar feature extraction for ATR. This problem represents a difficult real-world challenge for the application of ITL and is representative of the class of problems that stand to benefit from a more widespread implementation of ITL principles. The information-theoretic feature extraction methods presented are shown to be more effective and robust than the most popular statistical methods and some of the currently fielded sonar ATR algorithms. The ITL methods presented provide an alternative approach for designing the subspace mapping functions that are prevalent throughout ATR systems.
机译:多阶段自动目标识别(ATR)算法通过逐级减少每个阶段的数据量以提供可能目标位置的简明清单,为在声纳图像中定位感兴趣的项提供了一种有效的手段。传统上,这些算法中的阶段是使用统计方法设计的,这些方法通常基于关于输入数据分布的先验假设。通过扩展信息理论学习(ITL)的最新进展,本文将信息理论的概念应用于多阶段声纳ATR范例的特征提取阶段。通过合并信息理论性能指标,该方法不依赖于有关数据分布的先验统计假设。 ITL的广泛应用可能受到以下两种现象的阻碍:计算复杂性和使用难度。本文旨在解决这两个问题,以提高ITL的适用性。首先,对ITL标准的计算进行了优化,以进行更有效的评估。接下来,通过定制一些最流行的高级培训算法以使其与ITL系统兼容,可以提高培训效率。为了进一步提高训练效率,提出了一种针对ITL的批量训练方法,该方法降低了准则的二次复杂度。最后,研究了信息理论标准的各种属性,以便更好地理解ITL过程,以支持更容易实施。然后,将ITL效率和理解的这些进步应用于解决ATR的声纳特征提取问题。对于ITL的应用,此问题代表了一个艰巨的现实挑战,并且代表了可以从更广泛的ITL原则实施中受益的一类问题。所展示的信息理论特征提取方法显示出比最流行的统计方法和一些当前领域的声纳ATR算法更有效,更鲁棒。提出的ITL方法为设计整个ATR系统中普遍存在的子空间映射功能提供了另一种方法。

著录项

  • 作者

    Morejon, Rodney Alberto.;

  • 作者单位

    University of Florida.;

  • 授予单位 University of Florida.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 178 p.
  • 总页数 178
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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