Brouhaha: multi-task training for voice activity detection, speech-to-noise ratio, and C50 room acoustics estimation
read the original abstract
Most automatic speech processing systems register degraded performance when applied to noisy or reverberant speech. But how can one tell whether speech is noisy or reverberant? We propose Brouhaha, a neural network jointly trained to extract speech/non-speech segments, speech-to-noise ratios, and C50room acoustics from single-channel recordings. Brouhaha is trained using a data-driven approach in which noisy and reverberant audio segments are synthesized. We first evaluate its performance and demonstrate that the proposed multi-task regime is beneficial. We then present two scenarios illustrating how Brouhaha can be used on naturally noisy and reverberant data: 1) to investigate the errors made by a speaker diarization model (pyannote.audio); and 2) to assess the reliability of an automatic speech recognition model (Whisper from OpenAI). Both our pipeline and a pretrained model are open source and shared with the speech community.
This paper has not been read by Pith yet.
Forward citations
Cited by 2 Pith papers
-
SpeakerCard-1M: An Evidence-Grounded Corpus for In-the-Wild Speaker Verification
Introduces SpeakerCard-1M corpus with 56.7K speaker cards over 10.2K speakers plus new cross-modal SV protocols, reporting modest joint-training gains and large-model shortfalls on attribute verification.
-
SpeakerCard-1M: An Evidence-Grounded Corpus for In-the-Wild Speaker Verification
SpeakerCard-1M supplies 56.7k evidence-grounded speaker cards, 1.78M captions, and new cross-modal protocols showing audio LMs lag a dual-encoder baseline on attribute-conditioned verification while joint training bar...
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.