Forward Looking Sonar Scene Matching Using Deep Learning

P. Ribeiro, M. Santos, Paulo L. J. Drews-Jr, S. Botelho
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引用次数: 17

Abstract

Optical images display drastically reduced visibility due to underwater turbidity conditions. Sonar imaging presents an alternative form of environment perception for underwater vehicles navigation, mapping and localization. In this work we present a novel method for Acoustic Scene Matching. Therefore, we developed and trained a new Deep Learning architecture designed to compare two acoustic images and decide if they correspond to the same underwater scene. The network is named Sonar Matching Network (SMNet). The acoustic images used in this paper were obtained by a Forward Looking Sonar during a Remotely Operated Vehicle (ROV) mission. A Geographic Positioning System provided the ROV position for the ground truth score which is used in the learning process of our network. The proposed method uses 36.000 samples of real data for validation. From a binary classification perspective, our method achieved 98% of accuracy when two given scenes have more than ten percent of intersection.
使用深度学习的前视声纳场景匹配
由于水下浑浊条件,光学图像显示能见度急剧降低。声纳成像为水下航行器导航、测绘和定位提供了另一种形式的环境感知。本文提出了一种新的声场景匹配方法。因此,我们开发并训练了一个新的深度学习架构,旨在比较两个声学图像并确定它们是否对应于相同的水下场景。该网络被命名为声呐匹配网络(SMNet)。本文所使用的声学图像是由一个前视声纳在遥控操作车辆(ROV)任务中获得的。地理定位系统提供ROV位置,用于我们网络的学习过程中。该方法使用了36000个真实数据样本进行验证。从二元分类的角度来看,当两个给定场景的交集超过10%时,我们的方法达到98%的准确率。
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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