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Sonar-Based Deep Learning in Underwater Robotics: Overview, Robustness, and Challenges

Martin Aubard, Ana Madureira, Luís F. Teixeira, José Pinto

发表年份
2025
引用次数
33

摘要

With the growing interest in underwater exploration and monitoring, autonomous underwater vehicles have become essential. The recent interest in onboard deep learning (DL) has advanced real-time environmental interaction capabilities relying on efficient and accurate vision-based DL models. However, the predominant use of sonar in underwater environments, characterized by limited training data and inherent noise, poses challenges to model robustness. This autonomy improvement raises safety concerns for deploying such models during underwater operations, potentially leading to hazardous situations. This article aims to provide the first comprehensive overview of sonar-based DL under the scope of robustness. It studies sonar-based DL perception task models, such as classification, object detection, segmentation, and simultaneous localization and mapping. Furthermore, this article systematizes sonar-based state-of-the-art data sets, simulators, and robustness methods, such as neural network verification, out-of-distribution, and adversarial attacks. This article highlights the lack of robustness in sonar-based DL research and suggests future research pathways, notably establishing a baseline sonar-based data set and bridging the simulation-to-reality gap.

关键词

SonarRobustness (evolution)RoboticsUnderwaterArtificial intelligenceComputer scienceSynthetic aperture sonarDeep learningRemotely operated underwater vehicleEngineering

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