Automatic Screening for Children with Speech Disorder Using Automatic Speech Recognition: Opportunities and Challenges

Authors

  • Dancheng Liu University at Buffalo
  • Jason Yang University at Buffalo
  • Ishan Albrecht-Buehler University at Buffalo Nichols School
  • Helen Qin University at Buffalo Thomas Jefferson High School for Science & Technology
  • Sophie Li University at Buffalo Langley High School
  • Yuting Hu University at Buffalo
  • Amir Nassereldine University at Buffalo
  • Jinjun Xiong University at Buffalo

DOI:

https://doi.org/10.1609/aaaiss.v4i1.31807

Abstract

Speech is a fundamental aspect of human life, crucial not only for communication but also for cognitive, social, and academic development. Children with speech disorders (SD) face significant challenges that, if unaddressed, can result in lasting negative impacts. Traditionally, speech and language assessments (SLA) have been conducted by skilled speech-language pathologists (SLPs), but there is a growing need for efficient and scalable SLA methods powered by artificial intelligence. This position paper presents a survey of existing techniques suitable for automating SLA pipelines, with an emphasis on adapting automatic speech recognition (ASR) models for children’s speech, an overview of current SLAs and their automated counterparts to demonstrate the feasibility of AI-enhanced SLA pipelines, and a discussion of practical considerations, including accessibility and privacy concerns, associated with the deployment of AI-powered SLAs.

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Published

2024-11-08

How to Cite

Liu, D., Yang, J., Albrecht-Buehler, I., Qin, H., Li, S., Hu, Y., Nassereldine, A., & Xiong, J. (2024). Automatic Screening for Children with Speech Disorder Using Automatic Speech Recognition: Opportunities and Challenges. Proceedings of the AAAI Symposium Series, 4(1), 308-313. https://doi.org/10.1609/aaaiss.v4i1.31807

Issue

Section

Machine Intelligence for Equitable Global Health (MI4EGH) - Position Papers