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Image-Based Automated Change Detection for Synthetic Aperture Sonar by Multistage Coregistration and Canonical Correlation Analysis

机译:基于图像的多级配准和典型相关分析的合成孔径声纳自动变化检测

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摘要

In this paper, an automated change detection technique is presented that compares new and historical seafloor images created with sidescan synthetic aperture sonar (SAS) for changes occurring over time. The method consists of a four-stage process: a coarse navigational alignment that relates and approximates pixel locations of reference and repeat–pass data sets; fine-scale coregistration using the scale-invariant feature transform (SIFT) algorithm to match features between overlapping data sets; local coregistration that improves phase coherence; and finally, change detection utilizing a canonical correlation analysis (CCA) algorithm to detect changes. The method was tested using data collected with a high-frequency SAS in a sandy shallow-water environment. Successful results of this multistage change detection method are presented here, and the robustness of the techniques that exploit phase and amplitude levels of the backscattered signals is discussed. It is shown that the coherent nature of the SAS data can be exploited and utilized in this environment over time scales ranging from hours through several days. Robustness of the coregistration methods and analysis of scene coherence over time is characterized by analysis of repeat pass as well as synthetically modified data sets.
机译:在本文中,提出了一种自动变化检测技术,该技术比较了使用侧扫描合成孔径声纳(SAS)创建的新的和历史的海底图像随时间变化的情况。该方法包括四个阶段的过程:粗略的导航对齐,用于关联和近似参考和重复遍历数据集的像素位置;使用尺度不变特征变换(SIFT)算法对重叠数据集之间的特征进行匹配的精细尺度配准;改善相位连贯性的局部配准;最后,利用规范相关分析(CCA)算法进行变化检测以检测变化。该方法是在沙质浅水环境中使用高频SAS收集的数据进行测试的。本文介绍了这种多级变化检测方法的成功结果,并讨论了利用反向散射信号的相位和幅度电平的技术的鲁棒性。结果表明,在此环境中,可以从几小时到几天不等的时间范围内利用SAS数据的一致性。归一化方法的鲁棒性和随时间变化的场景连贯性分析通过重复遍历以及经过综合修改的数据集来表征。

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