ROAIOct 16, 2022

Survey of Deep Learning for Autonomous Surface Vehicles in the Marine Environment

arXiv:2210.08487v3140 citationsh-index: 87
Originality Synthesis-oriented
AI Analysis

It provides a review for researchers and engineers in maritime autonomy, identifying gaps and future directions, but is incremental as a survey paper.

This paper surveys the implementation of deep learning methods for autonomous surface vehicles (ASVs) in marine environments, addressing challenges in navigation, guidance, control, and cooperative operations, but does not present new experimental results or concrete numbers.

Within the next several years, there will be a high level of autonomous technology that will be available for widespread use, which will reduce labor costs, increase safety, save energy, enable difficult unmanned tasks in harsh environments, and eliminate human error. Compared to software development for other autonomous vehicles, maritime software development, especially on aging but still functional fleets, is described as being in a very early and emerging phase. This introduces very large challenges and opportunities for researchers and engineers to develop maritime autonomous systems. Recent progress in sensor and communication technology has introduced the use of autonomous surface vehicles (ASVs) in applications such as coastline surveillance, oceanographic observation, multi-vehicle cooperation, and search and rescue missions. Advanced artificial intelligence technology, especially deep learning (DL) methods that conduct nonlinear mapping with self-learning representations, has brought the concept of full autonomy one step closer to reality. This paper surveys the existing work regarding the implementation of DL methods in ASV-related fields. First, the scope of this work is described after reviewing surveys on ASV developments and technologies, which draws attention to the research gap between DL and maritime operations. Then, DL-based navigation, guidance, control (NGC) systems and cooperative operations, are presented. Finally, this survey is completed by highlighting the current challenges and future research directions.

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