Adapting Automatic Speech Recognition for Accented Air Traffic Control Communications

Effective communication in Air Traffic Control (ATC) is critical to maintaining aviation safety, yet the challenges posed by accented English remain largely unaddressed in Automatic Speech Recognition (ASR) systems. Existing models struggle with transcription accuracy for Southeast Asian-accented (SEA-accented) speech, particularly in noisy ATC environments. This study presents the development of ASR models fine-tuned specifically for Southeast Asian accents using a newly created dataset. Our research achieves significant improvements, achieving a Word Error Rate (WER) of 0.0982 or 9.82% on SEA-accented ATC speech. Additionally, the paper highlights the importance of region-specific datasets and accent-focused training, offering a pathway for deploying ASR systems in resource-constrained military operations. The findings emphasize the need for noise-robust training techniques and region-specific datasets to improve transcription accuracy for non-Western accents in ATC communications.
View on arXiv@article{wee2025_2502.20311, title={ Adapting Automatic Speech Recognition for Accented Air Traffic Control Communications }, author={ Marcus Yu Zhe Wee and Justin Juin Hng Wong and Lynus Lim and Joe Yu Wei Tan and Prannaya Gupta and Dillion Lim and En Hao Tew and Aloysius Keng Siew Han and Yong Zhi Lim }, journal={arXiv preprint arXiv:2502.20311}, year={ 2025 } }