--- license: mit base_model: - facebook/wav2vec2-large-robust - aadel4/Wav2vec_Classroom pipeline_tag: automatic-speech-recognition library_name: transformers language: en tags: - audio - automatic-speech-recognition - wav2vec2 --- ## Model Card: Wav2vec_Classroom_WSP_FT ### Model Overview **Model Name:** Wav2vec_Classroom_WSP_FT **Version:** 1.0 **Developed By:** Ahmed Adel Attia (University of Maryland & Stanford University) **Date:** 2025 **Description:** Wav2vec_Classroom_WSP_FT is an automatic speech recognition (ASR) model trained specifically for classroom speech transcription using a weakly supervised pretraining (WSP) approach. The model first undergoes supervised pretraining on weakly transcribed classroom data (NCTE-Weak) and is then fine-tuned using a small amount of human-verified gold-standard data (NCTE-Gold). This methodology allows the model to generalize well despite the scarcity of precisely transcribed classroom speech. This model is adapted from **[Wav2vec-Classroom](https://huggingface.co/aadel4/Wav2vec_Classroom)**, which was trained using continued pretraining (CPT) on large-scale unlabeled classroom speech data. The adaptation involves further fine-tuning to leverage weak transcriptions before final refinement on high-quality annotations. This model was originally trained using the fairseq library then ported into Huggingface. **Use Case:** - Speech-to-text transcription for classroom environments. - Educational research and analysis of classroom discourse. - Low-resource ASR applications where gold-standard labels are limited. ### Model Details **Architecture:** Wav2vec2.0-based model fine-tuned with Fairseq **Training Data:** - **NCTE-Weak:** 5000 hours of weak transcriptions from the NCTE dataset. - **NCTE-Gold:** 13 hours of manually transcribed classroom recordings. **Training Strategy:** 1. **Weakly Supervised Pretraining (WSP):** The model is first trained using NCTE-Weak transcripts, which contain alignment errors and omissions but provide useful weak supervision. 2. **Precise Fine-tuning:** The pretrained model is fine-tuned on NCTE-Gold, ensuring it adapts to high-quality transcriptions. ### Evaluation Results **Word Error Rate (WER) comparison on NCTE and MPT test sets:** | Training Data | NCTE WER | MPT WER | |--------------|----------|---------| | **Baseline (TEDLIUM-trained ASR)** | 55.82 / 50.56 | 55.11 / 50.50 | | **NCTE-Weak only** | 36.23 / 32.30 | 50.84 / 46.09 | | **NCTE-Gold only** | 21.12 / 16.47 | 31.52 / 27.93 | | **Self-training** | 17.45 / 15.09 | 27.42 / 26.24 | | **NCTE-WSP-ASR (NCTE-Weak → NCTE-Gold)** | **16.54 / 13.51** | **25.07 / 23.70** | ### Limitations - The model relies on weak supervision, and transcription quality is dependent on the balance between weak and gold-standard data. - Classroom noise, overlapping speech, and spontaneous interactions may still lead to recognition errors. - The model was trained specifically on elementary math classrooms and may not generalize well to other educational settings without further adaptation. ### Usage Request If you use the NCTE-WSP-ASR model in your research, please acknowledge this work and refer to the original paper submitted to Interspeech 2025. For inquiries or collaborations, don't hesitate to contact me at aadel@umd.edu or ahmadadelattia@gmail.com