--- license: mit datasets: - jacktol/atc-dataset language: - en metrics: - wer base_model: - openai/whisper-medium.en pipeline_tag: automatic-speech-recognition tags: - aviation - atc - aircraft - communication model-index: - name: Whisper Medium EN Fine-Tuned for ATC results: - task: type: automatic-speech-recognition dataset: name: ATC Dataset type: jacktol/atc-dataset metrics: - name: Word Error Rate (WER) type: wer value: 15.08 source: name: ATC Transcription Evaluation url: https://jacktol.net/posts/fine-tuning_whisper_for_atc/ --- # Whisper Medium EN Fine-Tuned for Air Traffic Control (ATC) ## Model Overview This model is a fine-tuned version of OpenAI's Whisper Medium EN model, specifically trained on **Air Traffic Control (ATC)** communication datasets. The fine-tuning process significantly improves transcription accuracy on domain-specific aviation communications, reducing the **Word Error Rate (WER) by 84%**, compared to the original pretrained model. The model is particularly effective at handling accent variations and ambiguous phrasing often encountered in ATC communications. - **Base Model**: OpenAI Whisper Medium EN - **Fine-tuned Model WER**: 15.08% - **Pretrained Model WER**: 94.59% - **Relative Improvement**: 84.06% You can access the fine-tuned model on Hugging Face: - [Whisper Medium EN Fine-Tuned for ATC](https://huggingface.co/jacktol/whisper-medium.en-fine-tuned-for-ATC) - [Whisper Medium EN Fine-Tuned for ATC (Faster Whisper)](https://huggingface.co/jacktol/whisper-medium.en-fine-tuned-for-ATC-faster-whisper) ## Model Description Whisper Medium EN fine-tuned for ATC is optimized to handle short, distinct transmissions between pilots and air traffic controllers. It is fine-tuned using data from: - **[ATCO2 corpus](https://huggingface.co/datasets/Jzuluaga/atco2_corpus_1h)** (1-hour test subset) - **[UWB-ATCC corpus](https://huggingface.co/datasets/Jzuluaga/uwb_atcc)** The fine-tuned model demonstrates enhanced performance in interpreting various accents, recognizing non-standard phraseology, and processing noisy or distorted communications. It is highly suitable for aviation-related transcription tasks. ## Intended Use The fine-tuned Whisper model is designed for: - **Transcribing aviation communication**: Providing accurate transcriptions for ATC communications, including accents and variations in English phrasing. - **Air Traffic Control Systems**: Assisting in real-time transcription of pilot-ATC conversations, helping improve situational awareness. - **Research and training**: Useful for researchers, developers, or aviation professionals studying ATC communication or developing new tools for aviation safety. You can test the model online using the [ATC Transcription Assistant](https://huggingface.co/spaces/jacktol/ATC-Transcription-Assistant), which lets you upload audio files and generate transcriptions. ## Model Description Whisper Medium EN fine-tuned for ATC is optimized to handle short, distinct transmissions between pilots and air traffic controllers. It is fine-tuned using data from the **[ATC Dataset](https://huggingface.co/datasets/jacktol/atc-dataset)**, a combined and cleaned dataset sourced from the following: - **[ATCO2 corpus](https://huggingface.co/datasets/Jzuluaga/atco2_corpus_1h)** (1-hour test subset) - **[UWB-ATCC corpus](https://huggingface.co/datasets/Jzuluaga/uwb_atcc)** The **ATC Dataset** merges these two original sources, filtering and refining the data to enhance transcription accuracy for domain-specific ATC communications. ## Training Procedure - **Hardware**: Fine-tuning was conducted on two A100 GPUs with 80GB memory. - **Epochs**: 10 - **Learning Rate**: 1e-5 - **Batch Size**: 32 (effective batch size with gradient accumulation) - **Augmentation**: Dynamic data augmentation techniques (Gaussian noise, pitch shifting, etc.) were applied during training. - **Evaluation Metric**: Word Error Rate (WER) ## Limitations While the fine-tuned model performs well in ATC-specific communications, it may not generalize as effectively to other domains of speech. Additionally, like most speech-to-text models, transcription accuracy can be affected by extremely poor-quality audio or heavily accented speech not encountered during training. ## References - **Blog Post**: [Fine-Tuning Whisper for ATC: 84% Improvement in Transcription Accuracy](https://jacktol.net/posts/fine-tuning_whisper_for_atc/) - **GitHub Repository**: [Fine-Tuning Whisper on ATC Data](https://github.com/jack-tol/fine-tuning-whisper-on-atc-data/tree/main)