--- license: openrail language: - en metrics: - f1 - recall - accuracy library_name: speechbrain pipeline_tag: audio-classification --- # Model Card for Model ID We build a CTC-based phoneme recognition model using wav2vec 2.0 (W2V2) for children under 4-year-old. We use three-level fine-tuning to gradually reduce age mismatch between adult phonetics to child phonetics. - **W2V2-Libri100h**: We first fine-tune W2V2-Base using 100 hours of LibriSpeech pretrained on unlabeled 960 hours LibriSpeech adult speech corpus with IPA phone sequences. - **W2V2-MyST**: We then fine-tune W2V2-Libri100h using [My Science Tutor](https://boulderlearning.com/products/myst/) corpus (consists of conversational speech of students between the third and fifth grades with a virtual tutor). - **W2V2-Libri100h-Pro (two-level fine-tuning)**: We fine-tune W2V2-Libri100h using [Providence](https://phonbank.talkbank.org/access/Eng-NA/Providence.html) corpus (consists of longititude audio of 6 English-speaking children aged from 1-4 years interacting with their mothers at home) on phoneme sequences. - **W2V2-MyST-Pro (three-level fine-tuning)**: Similar as W2V2-Libri100h-Pro, we fine-tune W2V2-MyST using Providence on phoneme sequences. We show W2V2-MyST-Pro is helpful for improving children's vocalization classification task on two corpus, including [Rapid-ABC](https://openaccess.thecvf.com/content_cvpr_2013/html/Rehg_Decoding_Childrens_Social_2013_CVPR_paper.html) and [BabbleCor](https://osf.io/rz4tx/). ## Model Sources For more information regarding this model, please checkout our paper: (TO-DO) - **Paper:** https://arxiv.org/pdf/2309.07287.pdf ## Model Description Folder contains the best checkpoint of the following setting - **W2V2-MyST by fine-tuning on Librispeech 960h**: save_960h/wav2vec2.ckpt - **W2V2-Pro trained on phone sequence**: save_MyST_Providence_ep45_filtered/wav2vec2.ckpt - **W2V2-Pro trained on consonant/vowel sequence**: save_MyST_Providence_ep45_filtered_cv_only/wav2vec2.ckpt ## Uses **We develop our complete fine-tuning recipe using SpeechBrain toolkit available at** - **https://github.com/jialuli3/speechbrain/tree/infant-voc-classification/recipes/RABC** (used for Rapid-ABC corpus) - **https://github.com/jialuli3/speechbrain/tree/infant-voc-classification/recipes/Babblecor** (used for BabbleCor corpus) # Paper/BibTex Citation If you found this model helpful to you, please cite us as

@article{li2023enhancing,
  title={Enhancing Child Vocalization Classification in Multi-Channel Child-Adult Conversations Through Wav2vec2 Children ASR Features},
  author={Li, Jialu and Hasegawa-Johnson, Mark and Karahalios, Karrie},
  journal={arXiv preprint arXiv:2309.07287},
  year={2023}
}
# Model Card Contact Jialu Li (she, her, hers) Ph.D candidate @ Department of Electrical and Computer Engineering, University of Illinois at Urbana-Champaign E-mail: jialuli3@illinois.edu Homepage: https://sites.google.com/view/jialuli/