Benchmarking Diarization Models
By: Luca A. Lanzendörfer , Florian Grötschla , Cesare Blaser and more
Potential Business Impact:
Helps computers know who is talking.
Speaker diarization is the task of partitioning audio into segments according to speaker identity, answering the question of "who spoke when" in multi-speaker conversation recordings. While diarization is an essential task for many downstream applications, it remains an unsolved problem. Errors in diarization propagate to downstream systems and cause wide-ranging failures. To this end, we examine exact failure modes by evaluating five state-of-the-art diarization models, across four diarization datasets spanning multiple languages and acoustic conditions. The evaluation datasets consist of 196.6 hours of multilingual audio, including English, Mandarin, German, Japanese, and Spanish. Overall, we find that PyannoteAI achieves the best performance at 11.2% DER, while DiariZen provides a competitive open-source alternative at 13.3% DER. When analyzing failure cases, we find that the primary cause of diarization errors stem from missed speech segments followed by speaker confusion, especially in high-speaker count settings.
Similar Papers
Multi-Stage Speaker Diarization for Noisy Classrooms
Sound
Helps computers know who spoke in noisy classrooms.
Robust Target Speaker Diarization and Separation via Augmented Speaker Embedding Sampling
Sound
Lets computers separate voices in noisy rooms.
Pushing the Limits of End-to-End Diarization
Sound
Helps computers know who is talking when.