Bao Thang Ta, Tung Lam Nguyen, Dinh Son Dang, Dan Linh Le, Van Hai Do
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A Multi-task Conformer for Spoofing Aware Speaker Verification
Spoofing attacks conducted via logical methods such as voice synthesis and voice conversion could significantly degrade the performance of a speaker verification system. Many spoofing countermeasures have been proposed, but they are only trained separately from speaker verification systems. There are only a few efforts to design a single model capable of rejecting both utterances spoken by different speakers as well as spoofing utterances. Meanwhile, Conformer, a combination of Transformer and Convolution Neural Network, has shown remarkable success for automatic speech recognition, but its application in speaker verification and anti-spoofing systems has not yet been explored. In this work, we proposed a multitask Conformer with statistical pooling for both speaker verification and voice spoofing detection. Our system achieved a 70% relative SASV-EER improvement over baselines on the ASVspoof 2019 LA evaluation set.