Neural-Assisted in-Motion Self-Heading Alignment
arXiv cs.AI / 4/2/2026
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Key Points
- The paper addresses rapid, accurate initial heading estimation for autonomous ocean platforms, where both accuracy and alignment time strongly affect mission success.
- It proposes an end-to-end, model-free, neural-assisted framework that uses the same inputs as traditional model-based heading estimation methods.
- Using real-world data collected by an autonomous surface vehicle, the approach delivers an average absolute heading error improvement of 53% over model-based techniques.
- The method also reduces required alignment time by up to 67%, enabling faster deployment and improved in-mission navigation accuracy.
- Overall, the results suggest neural-assisted self-heading alignment can shorten commissioning/deployment and enhance navigation reliability in ocean autonomy scenarios.
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