In this paper, a novel architecture for speaker recognition is proposed by
cascading speech enhancement and speaker processing. Its aim is to improve
speaker recognition performance when speech signals are corrupted by noise.
Instead of individually processing speech enhancement and speaker recognition,
the two modules are integrated into one framework by a joint optimisation using
deep neural networks. Furthermore, to increase robustness against noise, a
multi-stage attention mechanism is employed to highlight the speaker related
features learned from context information in time and frequency domain. To
evaluate speaker identification and verification performance of the proposed
approach, we test it on the dataset of VoxCeleb1, one of mostly used benchmark
datasets. Moreover, the robustness of our proposed approach is also tested on
VoxCeleb1 data when being corrupted by three types of interferences, general
noise, music, and babble, at different signal-to-noise ratio (SNR) levels. The
obtained results show that the proposed approach using speech enhancement and
multi-stage attention models outperforms two strong baselines not using them in
most acoustic conditions in our experiments.Comment: Acceptted by Odyssey 202