ECAPA-TDNN Embeddings for Speaker Diarization
About
Learning robust speaker embeddings is a crucial step in speaker diarization. Deep neural networks can accurately capture speaker discriminative characteristics and popular deep embeddings such as x-vectors are nowadays a fundamental component of modern diarization systems. Recently, some improvements over the standard TDNN architecture used for x-vectors have been proposed. The ECAPA-TDNN model, for instance, has shown impressive performance in the speaker verification domain, thanks to a carefully designed neural model. In this work, we extend, for the first time, the use of the ECAPA-TDNN model to speaker diarization. Moreover, we improved its robustness with a powerful augmentation scheme that concatenates several contaminated versions of the same signal within the same training batch. The ECAPA-TDNN model turned out to provide robust speaker embeddings under both close-talking and distant-talking conditions. Our results on the popular AMI meeting corpus show that our system significantly outperforms recently proposed approaches.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Speaker Diarization | AMI MixHeadset | DER (%)1.78 | 10 | |
| Speaker Diarization | AMI Lapel | DER2.13 | 8 | |
| Speaker Verification | VoxCeleb1 cleaned trial (test) | EER0.0069 | 6 |