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Underwater robot visual place recognition in the presence of dramatic appearance change

机译:外观变化剧烈时的水下机器人视觉位置识别

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This paper reports on an algorithm for underwater visual place recognition in the presence of dramatic appearance change. Long-term visual place recognition is challenging underwater due to biofouling, corrosion, and other effects that lead to dramatic visual appearance change, which often causes traditional point-based feature methods to perform poorly. Building upon the authors' earlier work, this paper presents an algorithm for underwater vehicle place recognition and relocalization that enables an autonomous underwater vehicle (AUV) to relocalize itself to a previously-built simultaneous localization and mapping (SLAM) graph. High-level structural features are learned using a supervised learning framework that retains features that have a high potential to persist in the underwater environment. Combined with a particle filtering framework, these features are used to provide a probabilistic representation of localization confidence. The algorithm is evaluated on real data, from multiple years, collected by a Hovering Autonomous Underwater Vehicle (HAUV) for ship hull inspection.
机译:本文报告了一种在外观发生剧烈变化时用于水下视觉场所识别的算法。由于生物污垢,腐蚀以及其他导致视觉外观发生戏剧性变化的现象,长期的视觉位置识别在水下具有挑战性,这通常会导致传统的基于点的特征方法表现不佳。在作者的早期工作的基础上,本文提出了一种用于水下航行器位置识别和重新定位的算法,该算法使自动水下航行器(AUV)能够将自身重新定位到先前构建的同时定位和地图绘制(SLAM)图。使用有监督的学习框架来学习高级结构特征,该框架保留了在水下环境中具有很高潜力的特征。结合粒子过滤框架,这些功能可用于提供定位置信度的概率表示。该算法是根据多年的真实数据进行评估的,该数据是由悬浮式水下机器人(HAUV)收集用于船体检查的。

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