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Deep Learning for Underwater Visual Odometry Estimation

机译:深度学习水下视觉径测量估算

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摘要

This paper addresses Visual Odometry (VO) estimation in challenging underwater scenarios. Robot visual-based navigation faces several additional difficulties in the underwater context, which severely hinder both its robustness and the possibility for persistent autonomy in underwater mobile robots using visual perception capabilities. In this work, some of the most renown VO and Visual Simultaneous Localization and Mapping (v-SLAM) frameworks are tested on underwater complex environments, assessing the extent to which they are able to perform accurately and reliably on robotic operational mission scenarios. The fundamental issue of precision, reliability and robustness to multiple different operational scenarios, coupled with the rise in predominance of Deep Learning architectures in several Computer Vision application domains, has prompted a great a volume of recent research concerning Deep Learning architectures tailored for visual odometry estimation. In this work, the performance and accuracy of Deep Learning methods on the underwater context is also benchmarked and compared to classical methods. Additionally, an extension of current work is proposed, in the form of a visual-inertial sensor fusion network aimed at correcting visual odometry estimate drift. Anchored on a inertial supervision learning scheme, our network managed to improve upon trajectory estimates, producing both metrically better estimates as well as more visually consistent trajectory shape mimicking.
机译:本文解决了挑战性水下情景的视觉内径(VO)估计。基于机器人的视觉导航面临着在水下背景下的几个额外困难,这严重阻碍了使用视觉感知能力在水下移动机器人中的稳健性和持久性自主的可能性。在这项工作中,在水下的复杂环境中测试了一些最具名为VO和视觉同步的本地化和映射(V-SLAM)框架,评估了他们能够在机器人运营使命场景中准确可靠地执行的程度。多种不同操作场景的精度,可靠性和鲁棒性的基本问题,加上了多个计算机视觉应用领域的深度学习架构的临时势地的上升,促使近期有关视觉内径估计量身定制的深度学习架构的巨大研究。在这项工作中,水下背景下深入学习方法的性能和准确性也是基准测试,并与古典方法进行比较。另外,提出了当前工作的延伸,以旨在校正视觉内径估计漂移的视觉惯性传感器融合网络的形式。我们的网络锚定在惯性监督学习计划上,我们管理轨迹估计,产生了几乎是度量较好的估计,以及更具视觉上的轨迹形状模拟。

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