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Reverb Diarization V1

Developed by Revai
Improved speaker diarization model based on pyannote3.0, achieving a 16.5% relative reduction in WDER across multiple test sets
Downloads 197.74k
Release Time : 8/27/2024

Model Overview

Used for speaker diarization tasks in speech recognition, capable of identifying and distinguishing different speakers in audio

Model Features

Performance improvement
Compared to the baseline pyannote3.0 model, WDER is relatively reduced by 16.5%
Large-scale evaluation
Evaluated on over 1,250,000 labels across five different test sets
Ease of use
Provides simple Python API interface, supports RTTM format output

Model Capabilities

Speaker recognition
Speech segmentation
Multi-speaker differentiation

Use Cases

Speech processing
Meeting minutes
Automatically distinguish different speakers in meeting recordings
Improves accuracy of meeting minutes
Interview analysis
Identify interviewers and interviewees in interview audio
Facilitates content organization and analysis
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