SOTAVerified

Efficient Attention Branch Network with Combined Loss Function for Automatic Speaker Verification Spoof Detection

2021-09-05Code Available1· sign in to hype

Amir Mohammad Rostami, Mohammad Mehdi Homayounpour, Ahmad Nickabadi

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Many endeavors have sought to develop countermeasure techniques as enhancements on Automatic Speaker Verification (ASV) systems, in order to make them more robust against spoof attacks. As evidenced by the latest ASVspoof 2019 countermeasure challenge, models currently deployed for the task of ASV are, at their best, devoid of suitable degrees of generalization to unseen attacks. Upon further investigation of the proposed methods, it appears that a broader three-tiered view of the proposed systems. comprised of the classifier, feature extraction phase, and model loss function, may to some extent lessen the problem. Accordingly, the present study proposes the Efficient Attention Branch Network (EABN) modular architecture with a combined loss function to address the generalization problem...

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
ASVspoof 2019 - LAProposed: LFCC+SE-ResABNet+CombLossEER1.89Unverified
ASVspoof 2019 - PAProposed: logPowSpec+EABNet+CombLossEER0.86Unverified

Reproductions