STEAMROLLER: A Multi-Agent System for Inclusive Automatic Speech Recognition for People who Stutter
By: Ziqi Xu , Yi Liu , Yuekang Li and more
Potential Business Impact:
Makes stuttered speech sound fluent for computers.
People who stutter (PWS) face systemic exclusion in today's voice-driven society, where access to voice assistants, authentication systems, and remote work tools increasingly depends on fluent speech. Current automatic speech recognition (ASR) systems, trained predominantly on fluent speech, fail to serve millions of PWS worldwide. We present STEAMROLLER, a real time system that transforms stuttered speech into fluent output through a novel multi-stage, multi-agent AI pipeline. Our approach addresses three critical technical challenges: (1) the difficulty of direct speech to speech conversion for disfluent input, (2) semantic distortions introduced during ASR transcription of stuttered speech, and (3) latency constraints for real time communication. STEAMROLLER employs a three stage architecture comprising ASR transcription, multi-agent text repair, and speech synthesis, where our core innovation lies in a collaborative multi-agent framework that iteratively refines transcripts while preserving semantic intent. Experiments on the FluencyBank dataset and a user study demonstrates clear word error rate (WER) reduction and strong user satisfaction. Beyond immediate accessibility benefits, fine tuning ASR on STEAMROLLER repaired speech further yields additional WER improvements, creating a pathway toward inclusive AI ecosystems.
Similar Papers
Stuttering-Aware Automatic Speech Recognition for Indonesian Language
Computation and Language
Helps computers understand people who stutter.
Zero-Shot Recognition of Dysarthric Speech Using Commercial Automatic Speech Recognition and Multimodal Large Language Models
Audio and Speech Processing
Helps people with speech problems talk to computers.
Fine-Tuning ASR for Stuttered Speech: Personalized vs. Generalized Approaches
Sound
Helps voice assistants understand people who stutter.