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Using Image Processing Methods to Improve the Detection of Buried Explosive Threats in GPR Data.

机译:使用图像处理方法改进对GPR数据中潜在爆炸物威胁的检测。

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摘要

Current state of the art techniques for landmine detection in ground penetrating radar (GPR) utilize statistical methods to identify characteristics of a landmine response. This research makes use of 2-D slices of data in which subsurface landmine responses have hyperbolic shapes. Various methods from the field of visual image processing are adapted to the 2-D GPR data, producing superior landmine detection results. This research goes on to develop a physics-based GPR augmentation method motivated by current advances in visual object detection. This GPR specific augmentation is used to mitigate issues caused by insufficient training sets. This work shows that augmentation improves detection performance under training conditions that are normally very difficult. Finally, this work introduces the use of convolutional neural networks as a method to learn feature extraction parameters. These learned convolutional features outperform hand-designed features in GPR detection tasks. This work presents a number of methods, both borrowed from and motivated by the substantial work in visual image processing. The methods developed and presented in this work show an improvement in overall detection performance and introduce a method to improve the robustness of statistical classification.
机译:用于探地雷达(GPR)中的地雷检测的最新技术利用统计方法来识别地雷响应的特征。这项研究利用了二维数据切片,其中地下地雷响应具有双曲线形状。视觉图像处理领域的各种方法都适用于二维GPR数据,可产生出色的地雷检测结果。这项研究继续发展了一种基于物理的GPR增强方法,该方法受视觉对象检测的最新进展的启发。此GPR特有的增强功能用于缓解培训集不足引起的问题。这项工作表明,增强可以提高通常非常困难的训练条件下的检测性能。最后,这项工作介绍了使用卷积神经网络作为学习特征提取参数的方法。这些学习的卷积特征在GPR检测任务中胜过手工设计的特征。这项工作提出了许多方法,这些方法都是从视觉图像处理中的大量工作中借来并受其启发的。在这项工作中开发和提出的方法显示出整体检测性能的提高,并介绍了一种提高统计分类的鲁棒性的方法。

著录项

  • 作者

    Sakaguchi, Rayn.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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