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"StutterNet: Stuttering Disfluencies Detection in Synthetic Speech Signals ..."
Muhammad Abubakar et al. (2024)
- Muhammad Abubakar, Muhammad Mujahid, Khadija Kanwal, Sajid Iqbal, Muhammad Nabeel Asghar, Abdullah A. Alaulamie:
StutterNet: Stuttering Disfluencies Detection in Synthetic Speech Signals via Mel Frequency Cepstral Coefficients Features Using Deep Learning. IEEE Access 12: 99308-99320 (2024)
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