StutterFormer Generated Fluent Speech
收藏IEEE2026-04-17 收录
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https://ieee-dataport.org/documents/stutterzero-stutterformer-generated-fluent-speech
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Over 70 million people worldwide experience stuttering, yet most automatic speech systems misinterpret disfluent utterances or fail to transcribe them accurately. Existing methods for stutter correction rely on handcrafted feature extraction or multi-stage automatic speech recognition (ASR) and text-to-speech (TTS) pipelines, which separate transcription from audio reconstruction and often amplify distortions. This work introduces StutterZero and StutterFormer, the first end-to-end waveform-to-waveform models that directly convert stuttered speech into fluent speech while jointly predicting its transcription. StutterZero employs a convolutional\u2013bidirectional LSTM encoder\u2013decoder with attention, whereas StutterFormer integrates a dual-stream Transformer with shared acoustic\u2013linguistic representations. Both architectures are trained on paired stuttered\u2013fluent data synthesized from the SEP-28K and LibriStutter corpora and evaluated on unseen speakers from the FluencyBank dataset. Across all benchmarks, StutterZero had a 24% decrease in Word Error Rate (WER) and a 31% improvement in semantic similarity (BERTScore) compared to the leading Whisper-Medium model. StutterFormer achieved better results, with a 28% decrease in WER and a 34% improvement in BERTScore. The results validate the feasibility of direct end-to-end stutter-to-fluent speech conversion, offering new opportunities for inclusive human\u2013computer interaction, speech therapy, and accessibility-oriented AI systems.
提供机构:
Qianheng Xu



