Potential Applications of Artificial Intelligence for Cross-language Intelligibility Assessment of Dysarthric Speech

Yeo, Eunjung, Liss, Julie, Berisha, Visar, Mortensen, David

arXiv.org Artificial Intelligence 

Purpose: This commentary introduces how artificial intelligence (AI) can be leveraged to advance cross-language intelligibility assessment of dysarthric speech. Method: We propose a conceptual framework consisting of a universal model that captures language-universal speech impairments and a language-specific intelligibility model that incorporates linguistic nuances. Additionally, we identify key barriers to cross-language intelligibility assessment, including data scarcity, annotation complexity, and limited linguistic insights, and present AI-driven solutions to overcome these challenges. Conclusion: Advances in AI offer transformative opportunities to enhance cross-language intelligibility assessment for dysarthric speech by balancing scalability across languages and adaptability by languages.