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3 months ago

TitaNet: Neural Model for speaker representation with 1D Depth-wise separable convolutions and global context

Nithin Rao Koluguri Taejin Park Boris Ginsburg

TitaNet: Neural Model for speaker representation with 1D Depth-wise separable convolutions and global context

Abstract

In this paper, we propose TitaNet, a novel neural network architecture for extracting speaker representations. We employ 1D depth-wise separable convolutions with Squeeze-and-Excitation (SE) layers with global context followed by channel attention based statistics pooling layer to map variable-length utterances to a fixed-length embedding (t-vector). TitaNet is a scalable architecture and achieves state-of-the-art performance on speaker verification task with an equal error rate (EER) of 0.68% on the VoxCeleb1 trial file and also on speaker diarization tasks with diarization error rate (DER) of 1.73% on AMI-MixHeadset, 1.99% on AMI-Lapel and 1.11% on CH109. Furthermore, we investigate various sizes of TitaNet and present a light TitaNet-S model with only 6M parameters that achieve near state-of-the-art results in diarization tasks.

Code Repositories

NVIDIA/NeMo
Official
pytorch
Wadaboa/titanet
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
speaker-diarization-on-ami-lapelTitaNet-M (NME-SC)
DER(%): 1.99
speaker-diarization-on-ami-lapelTitaNet-L (NME-SC)
DER(%): 2.03
speaker-diarization-on-ami-lapelECAPA (SC)
DER(%): 2.36
speaker-diarization-on-ami-lapelTitaNet-S (NME-SC)
DER(%): 2.00
speaker-diarization-on-ami-mixheadsetECAPA (SC)
DER(%): 1.78
speaker-diarization-on-ami-mixheadsetTitaNet-S (NME-SC)
DER(%): 2.22
speaker-diarization-on-ami-mixheadsetTitaNet-L (NME-SC)
DER(%): 1.73
speaker-diarization-on-ami-mixheadsetTitaNet-M (NME-SC)
DER(%): 1.79
speaker-diarization-on-callhome-109titanet-s
DER(%): 1.11
speaker-diarization-on-ch109x-vector (PLDA + AHC)
DER(%): 9.72
speaker-diarization-on-ch109TitaNet-S (NME-SC)
DER(%): 1.11
speaker-diarization-on-ch109TitaNet-L (NME-SC)
DER(%): 1.19
speaker-diarization-on-ch109TitaNet-M (NME-SC)
DER(%): 1.13
speaker-diarization-on-nist-sre-2000TitaNet-L (NME-SC)
DER(%): 6.73
speaker-diarization-on-nist-sre-2000TitaNet-S (NME-SC)
DER(%): 6.37
speaker-diarization-on-nist-sre-2000x-vector (PLDA + AHC)
DER(%): 8.39
speaker-diarization-on-nist-sre-2000TitaNet-M (NME-SC)
DER(%): 6.47
speaker-diarization-on-nist-sre-2000x-vector (MCGAN)
DER(%): 5.73
speaker-verification-on-voxcelebTitanNet -S
EER: 1.15
speaker-verification-on-voxcelebTitanNet -L
EER: 0.68
speaker-verification-on-voxcelebTitanNet -M
EER: 0.81

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TitaNet: Neural Model for speaker representation with 1D Depth-wise separable convolutions and global context | Papers | HyperAI