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Exploiting Multi-Look Information for Landmine Detection in Forward Looking Infrared Video.

机译:利用前瞻性红外视频中的地雷探测多看信息。

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摘要

Forward Looking Infrared (FLIR) cameras have recently been studied as a sensing modality for use in landmine detection systems. FLIR-based detection systems benefit from larger standoff distances and faster rates of advance than other sensing modalities, but they also present significant challenges for detection algorithm design. FLIR video typically yields multiple looks at each object in the scene, each from a different camera perspective. As a result each object in the scene appears in multiple video frames, and each time at a different shape and size. This presents questions about how best to utilize such information. Evidence in the literature suggests such multi-look information can be exploited to improve detection performance but, to date, there has been no controlled investigation of multi-look information in detection. Any results are further confounded because no precise definition exists for what constitutes multi-look information. This thesis addresses these problems by developing a precise mathematical definition of "a look", and how to quantify the multi-look content of video data. Controlled experiments are conducted to assess the impact of multi-look information on FLIR detection using several popular detection algorithms. Based on these results two novel video processing techniques are presented, the plan-view framework and the FLRX algorithm, to better exploit multi-look information. The results show that multi-look information can have a positive or negative impact on detection performance depending on how it is used. The results also show that the novel algorithms presented here are effective techniques for analyzing video and exploiting any multi-look information to improve detection performance.
机译:前瞻性红外(FLIR)相机最近已被研究为用于地雷探测系统的一种传感方式。与其他传感方式相比,基于FLIR的检测系统受益于更大的隔离距离和更快的前进速度,但它们也为检测算法设计提出了重大挑战。 FLIR视频通常会在场景中的每个对象上产生多个外观,每个视角都是从不同的摄像机角度来看的。结果,场景中的每个对象都出现在多个视频帧中,并且每次都具有不同的形状和大小。这提出了有关如何最好地利用此类信息的问题。文献中的证据表明可以利用这种多视点信息来提高检测性能,但是迄今为止,还没有在检测中对多视点信息进行有控制的研究。由于对构成多面信息的内容不存在精确定义,因此任何结果都会进一步混淆。本文通过建立精确的“外观”数学定义以及如何量化视频数据的多外观内容来解决这些问题。使用几种流行的检测算法进行了受控实验,以评估多形式信息对FLIR检测的影响。基于这些结果,提出了两种新颖的视频处理技术,即平面视图框架和FLRX算法,以更好地利用多视点信息。结果表明,多视信息可能会对检测性能产生正面或负面影响,具体取决于使用方式。结果还表明,此处提出的新颖算法是用于分析视频和利用任何多视点信息来提高检测性能的有效技术。

著录项

  • 作者

    Malof, Jordan Milton.;

  • 作者单位

    Duke University.;

  • 授予单位 Duke University.;
  • 学科 Engineering Electronics and Electrical.;Remote Sensing.
  • 学位 M.S.
  • 年度 2013
  • 页码 103 p.
  • 总页数 103
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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