Daily Arxiv

This is a page that curates AI-related papers published worldwide.
All content here is summarized using Google Gemini and operated on a non-profit basis.
Copyright for each paper belongs to the authors and their institutions; please make sure to credit the source when sharing.

Adaptation and Optimization of Automatic Speech Recognition (ASR) for the Maritime Domain in the Field of VHF Communication

Created by
  • Haebom

Author

Emin Cagatay Nakilcioglu, Maximilian Reimann, Ole John

Outline

This paper proposes marFM, a multilingual automatic speech recognition (ASR) system for maritime radio communications. We describe the challenges of maritime radio communications and present marFM's deep learning architecture, based on audio processing techniques and machine learning algorithms. We evaluate the transcription performance of the ASR model using various maritime radio data.

Takeaways, Limitations

Takeaways: We present a multilingual ASR system that can contribute to the automation and efficiency of maritime radio communications. Its practicality is verified through performance evaluations of various maritime radio data.
Limitations: Lack of specific performance metrics and comparative models. Further validation of robustness and generalization performance in real-world maritime environments is needed. Lack of detailed information on the size and diversity of the dataset.
👍