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Enhanced echolocation via robust statistics and super-resolution of sonar images.

机译:通过可靠的统计信息和超高分辨率的声纳图像增强回波定位。

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摘要

Echolocation is a process in which an animal uses acoustic signals to exchange information with environments. In a recent study, Neretti et al. have shown that the use of robust statistics can significantly improve the resiliency of echolocation against noise and enhance its accuracy by suppressing the development of sidelobes in the processing of an echo signal. In this research, the use of robust statistics is extended to problems in underwater explorations. The dissertation consists of two parts.;Part I describes how robust statistics can enhance the identification of target objects, which in this case are cylindrical containers filled with four different liquids. Particularly, this work employs a variation of an existing robust estimator called an L-estimator, which was first suggested by Koenker and Bassett. As pointed out by Au et al.; a 'highlight interval' is an important feature, and it is closely related with many other important features that are known to be crucial for dolphin echolocation. A varied L-estimator described in this text is used to enhance the detection of highlight intervals, which eventually leads to a successful classification of echo signals.;Part II extends the problem into 2 dimensions. Thanks to the advances in material and computer technology, various sonar imaging modalities are available on the market. By registering acoustic images from such video sequences, one can extract more information on the region of interest. Computer vision and image processing allowed application of robust statistics to the acoustic images produced by forward looking sonar systems, such as Dual-frequency Identification Sonar and ProViewer. The first use of robust statistics for sonar image enhancement in this text is in image registration. Random Sampling Consensus (RANSAC) is widely used for image registration. The registration algorithm using RANSAC is optimized for sonar image registration, and the performance is studied. The second use of robust statistics is in fusing the images. It is shown that the maximum a posteriori fusion method can be formulated in a Kalman filter-like manner, and also that the resulting expression is identical to a W-estimator with a specific weight function.
机译:回声是动物利用声信号与环境交换信息的过程。在最近的研究中,Neretti等人。已经表明,使用可靠的统计数据可以显着提高回声定位对噪声的弹性,并通过抑制回声信号处理过程中旁瓣的发展来提高其准确性。在这项研究中,稳健统计的使用扩展到了水下勘探中的问题。本文由两部分组成。第一部分描述了稳健的统计数据如何增强对目标对象的识别,在这种情况下,目标对象是装有四种不同液体的圆柱形容器。特别是,这项工作采用了现有的鲁棒估计器(称为L估计器)的一种变体,该变体最早由Koenker和Bassett提出。正如Au等人所指出的; “高光间隔”是一个重要特征,它与其他许多对海豚回声定位至关重要的重要特征密切相关。本文中描述的变化的L估计器用于增强对高光间隔的检测,最终导致对回波信号的成功分类。第二部分将问题扩展到二维。由于材料和计算机技术的进步,市场上可以找到各种声纳成像设备。通过记录来自此类视频序列的声像,可以提取有关感兴趣区域的更多信息。计算机视觉和图像处理功能可将可靠的统计信息应用于由前瞻性声纳系统(如双频识别声纳和ProViewer)产生的声像。本文中将稳健统计用于声纳图像增强的第一个用途是图像配准。随机采样共识(RANSAC)被广泛用于图像配准。优化了使用RANSAC的配准算法进行声纳图像配准,并研究了其性能。可靠统计的第二个用途是融合图像。结果表明,最大后验融合方法可以用类似卡尔曼滤波器的方式来表示,并且所得表达式与具有特定权函数的W估计量相同。

著录项

  • 作者

    Kim, Kio.;

  • 作者单位

    Brown University.;

  • 授予单位 Brown University.;
  • 学科 Physics Acoustics.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 96 p.
  • 总页数 96
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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