浅水多波束成像清理测深误差的比较研究

E. Kammerer, D. Charlot, S. Guillaudeux, P. Michaux
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引用次数: 12

摘要

介绍了法国海道测量局(SHOM)为期六个月的研究结果,该研究旨在调查使用多波束海底图像来辅助现有的测深数据清理技术。这些数据清理算法有效地消除了深水(深度>80 m)调查数据集的错误测深,但在浅水中产生了可疑的测深。对于作业者来说,验证或取消这种探测是非常耗时的。为了提高性能,作者测试了是否可以从多波束图像和测深之间的相关性中获得额外的信息。所讨论的方法试图将成像对象(回声/阴影集)与SHOM算法输出的可疑声音列表相关联。考虑了两种方法:平对平方法和地理方法。目标检测算法在两种不同的方法上运行。研究了两个数据集:一个来自simmrad EM1002S,另一个来自ATLAS FS20。所开发的分割工具有助于分析图像中出现异常的可疑光束。所实现的四种方法可以适应所使用的数据类型和所期望的分割的微妙性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative study of shallow water multibeam imagery for cleaning bathymetry sounding errors
Presents the results of a six-month study for the French Hydrographic Service (SHOM) to investigate the use of multibeam seafloor imagery for aiding existing bathymetry data cleaning techniques. These data cleaning algorithms efficiently eliminate erroneous soundings from deep water (depth >80 m) survey datasets but generate dubious soundings in shallow water. Such soundings are time consuming for an operator to validate or invalidate. In order to improve performance, the authors tested whether additional information could be derived from the correlation between multibeam imagery and bathymetry. The discussed methodology attempts to associate imaged objects (echo/shadow sets) with a list of suspicious soundings output by SHOM algorithms. Two approaches are considered: a ping-to-ping approach and a geographic approach. Object detection algorithms are run on the two different methods. Two datasets are examined: one from a SIMRAD EM1002S and another from an ATLAS FS20. The segmentation tools developed are helpful for analyzing suspicious beams where the imagery presents an anomaly. The four methods implemented may be adapted to the type of data used and to the desired subtlety of the segmentation.
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