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.

Abstract

Autonomous platforms operating in the oceans require accurate navigation to successfully complete their mission. In this regard, the initial heading estimation accuracy and the time required to achieve it play a critical role. The initial heading is traditionally estimated by model-based approaches employing orientation decomposition. However, methods such as the dual vector decomposition and optimized attitude decomposition achieve satisfactory heading accuracy only after long alignment times. To allow rapid and accurate initial heading estimation, we propose an end-to-end, model-free, neural-assisted framework using the same inputs as the model-based approaches. Our proposed approach was trained and evaluated on real-world dataset captured by an autonomous surface vehicle. Our approach shows a significant accuracy improvement over the model-based approaches achieving an average absolute error improvement of 53%. Additionally, our proposed approach was able to reduce the alignment time by up to 67%. Thus, by employing our proposed approach, the reduction in alignment time and improved accuracy allow for a shorter deployment time of an autonomous platform and increased navigation accuracy during the mission.