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Stage-Wise and Prior-Aware Neural Speech Phase Prediction

Authors :
Liu, Fei
Ai, Yang
Du, Hui-Peng
Lu, Ye-Xin
Zheng, Rui-Chen
Ling, Zhen-Hua
Publication Year :
2024

Abstract

This paper proposes a novel Stage-wise and Prior-aware Neural Speech Phase Prediction (SP-NSPP) model, which predicts the phase spectrum from input amplitude spectrum by two-stage neural networks. In the initial prior-construction stage, we preliminarily predict a rough prior phase spectrum from the amplitude spectrum. The subsequent refinement stage transforms the amplitude spectrum into a refined high-quality phase spectrum conditioned on the prior phase. Networks in both stages use ConvNeXt v2 blocks as the backbone and adopt adversarial training by innovatively introducing a phase spectrum discriminator (PSD). To further improve the continuity of the refined phase, we also incorporate a time-frequency integrated difference (TFID) loss in the refinement stage. Experimental results confirm that, compared to neural network-based no-prior phase prediction methods, the proposed SP-NSPP achieves higher phase prediction accuracy, thanks to introducing the coarse phase priors and diverse training criteria. Compared to iterative phase estimation algorithms, our proposed SP-NSPP does not require multiple rounds of staged iterations, resulting in higher generation efficiency.<br />Comment: Accepted by SLT2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.04990
Document Type :
Working Paper