HyperAIHyperAI

Command Palette

Search for a command to run...

3 months ago

Reshape Dimensions Network for Speaker Recognition

Ivan Yakovlev Rostislav Makarov Andrei Balykin Pavel Malov Anton Okhotnikov Nikita Torgashov

Reshape Dimensions Network for Speaker Recognition

Abstract

In this paper, we present Reshape Dimensions Network (ReDimNet), a novel neural network architecture for extracting utterance-level speaker representations. Our approach leverages dimensionality reshaping of 2D feature maps to 1D signal representation and vice versa, enabling the joint usage of 1D and 2D blocks. We propose an original network topology that preserves the volume of channel-timestep-frequency outputs of 1D and 2D blocks, facilitating efficient residual feature maps aggregation. Moreover, ReDimNet is efficiently scalable, and we introduce a range of model sizes, varying from 1 to 15 M parameters and from 0.5 to 20 GMACs. Our experimental results demonstrate that ReDimNet achieves state-of-the-art performance in speaker recognition while reducing computational complexity and the number of model parameters.

Code Repositories

IDRnD/ReDimNet
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
speaker-verification-on-voxcelebReDimNet-B2-SF2-LM (4.7M)
EER: 0.57
speaker-verification-on-voxcelebReDimNet-B3-LM (3.0M)
EER: 0.5
speaker-verification-on-voxcelebReDimNet-B6-SF2-LM-ASNorm (15.0M)
EER: 0.37
speaker-verification-on-voxcelebReDimNet-B0-LM-ASNorm (1.0M)
EER: 1.07
speaker-verification-on-voxcelebReDimNet-B3-LM-ASNorm (3.0M)
EER: 0.47
speaker-verification-on-voxcelebReDimNet-B0-LM (1.0M)
EER: 1.16
speaker-verification-on-voxcelebReDimNet-B4-LM-ASNorm (6.3M)
EER: 0.44
speaker-verification-on-voxcelebReDimNet-B4-LM (6.3M)
EER: 0.51
speaker-verification-on-voxcelebReDimNet-B5-SF2-LM-ASNorm (9.2M)
EER: 0.39
speaker-verification-on-voxcelebReDimNet-B6-SF2-LM (15.0M)
EER: 0.4
speaker-verification-on-voxcelebReDimNet-B1-LM (2.2M)
EER: 0.85
speaker-verification-on-voxcelebReDimNet-B5-SF2-LM (9.2M)
EER: 0.43
speaker-verification-on-voxcelebReDimNet-B2-SF2-LM-ASNorm (4.7M)
EER: 0.52
speaker-verification-on-voxcelebReDimNet-B1-LM-ASNorm (2.2M)
EER: 0.73
speaker-verification-on-voxceleb1ReDimNet-B4-LM-ASNorm (6.3M)
EER: 0.44
speaker-verification-on-voxceleb1ReDimNet-B4-LM (6.3M)
EER: 0.51
speaker-verification-on-voxceleb1ReDimNet-B1-LM (2.2M)
EER: 0.85
speaker-verification-on-voxceleb1ReDimNet-B6-SF2-LM-ASNorm (15.0M)
EER: 0.37
speaker-verification-on-voxceleb1ReDimNet-B2-SF2-LM-ASNorm (4.7M)
EER: 0.52
speaker-verification-on-voxceleb1ReDimNet-B3-LM-ASNorm (3.0M)
EER: 0.47
speaker-verification-on-voxceleb1ReDimNet-B5-SF2-LM (9.2M)
EER: 0.43
speaker-verification-on-voxceleb1ReDimNet-B1-LM-ASNorm (2.2M)
EER: 0.73
speaker-verification-on-voxceleb1ReDimNet-B5-SF2-LM-ASNorm (9.2M)
EER: 0.39
speaker-verification-on-voxceleb1ReDimNet-B0-LM (1.0M)
EER: 1.16
speaker-verification-on-voxceleb1ReDimNet-B3-LM (3.0M)
EER: 0.5
speaker-verification-on-voxceleb1ReDimNet-B0-LM-ASNorm (1.0M)
EER: 1.07
speaker-verification-on-voxceleb1ReDimNet-B6-SF2-LM (15.0M)
EER: 0.4
speaker-verification-on-voxceleb1ReDimNet-B2-SF2-LM (4.7M)
EER: 0.57

Build AI with AI

From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.

AI Co-coding
Ready-to-use GPUs
Best Pricing
Get Started

Hyper Newsletters

Subscribe to our latest updates
We will deliver the latest updates of the week to your inbox at nine o'clock every Monday morning
Powered by MailChimp