Grammar Based Speaker Role Identification for Air Traffic Control Speech Recognition
Amrutha Prasad, Juan Zuluaga-Gomez, Petr Motlicek, Saeed Sarfjoo,, Iuliia Nigmatulina, Oliver Ohneiser, Hartmut Helmke

TL;DR
This paper introduces a grammar-based method for automatically identifying speaker roles in noisy air traffic control speech, improving recognition accuracy by segmenting data and training separate models for controllers and pilots.
Contribution
The work proposes an innovative approach combining transcript-based segmentation and role-specific acoustic models to enhance speech recognition in noisy ATC environments.
Findings
Achieved 83% accuracy in speaker role identification.
Separate or multitask acoustic models outperform pooled models.
Effective in low SNR conditions below 15 dB.
Abstract
Automatic Speech Recognition (ASR) for air traffic control is generally trained by pooling Air Traffic Controller (ATCO) and pilot data into one set. This is motivated by the fact that pilot's voice communications are more scarce than ATCOs. Due to this data imbalance and other reasons (e.g., varying acoustic conditions), the speech from ATCOs is usually recognized more accurately than from pilots. Automatically identifying the speaker roles is a challenging task, especially in the case of the noisy voice recordings collected using Very High Frequency (VHF) receivers or due to the unavailability of the push-to-talk (PTT) signal, i.e., both audio channels are mixed. In this work, we propose to (1) automatically segment the ATCO and pilot data based on an intuitive approach exploiting ASR transcripts and (2) subsequently consider an automatic recognition of ATCOs' and pilots' voice as two…
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Taxonomy
TopicsSpeech Recognition and Synthesis · Speech and Audio Processing · Natural Language Processing Techniques
