Autonomous Optical Survey Based on Unsupervised Segmentation of Acoustic Backscatter

Øystein Sture, T. Fossum, M. Ludvigsen, M. Wiig
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引用次数: 2

Abstract

The application of acoustics to study the seabed have for decades provided industry and science with valuable information, and is still excels in terms of spatial coverage and detail. An acoustic response from the seabed not only contains information about the range, through the two way travel time, but also the acoustic reflectivity of the substrate from the strength of the backscatter response. As the signal strength differs between substrate types, this information can be used to detect and classify different seabed types. However, there are ambiguities in the acoustic signatures and the reliance on ground truth samples, for succeeding in this identification, is a limiting factor. In this paper we present a way to mitigate this problem using Hidden Markov Random Fields (HMRF) to perform unsupervised segmentation of the backscatter response for the purpose of determining different seabed types. The outcome of this analysis is directly used to plan and conduct an autonomous near-seabed camera survey to verify the classification results, whilst complementing the acoustical data-set. The method is tested in a full-scale experiment and performed in-situ onboard a Kongsberg Hugin 1000 autonomous underwater vehicle (AUV).
基于声学后向散射无监督分割的自主光学测量
几十年来,声学在海底研究中的应用为工业和科学提供了宝贵的信息,并且在空间覆盖和细节方面仍然很出色。来自海底的声响应不仅包含通过双向传播时间的范围信息,而且还包含来自后向散射响应强度的基材声反射率信息。由于不同基材类型的信号强度不同,该信息可用于检测和分类不同的海底类型。然而,声学特征存在模糊性,对地面真值样本的依赖是成功识别的限制因素。在本文中,我们提出了一种缓解这一问题的方法,使用隐马尔可夫随机场(HMRF)对后向散射响应进行无监督分割,以确定不同的海底类型。该分析结果可直接用于规划和实施自主的近海床相机调查,以验证分类结果,同时补充声学数据集。该方法在全尺寸实验中进行了测试,并在康士伯Hugin 1000自主水下航行器(AUV)上进行了现场测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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