Electronics Letters (Oct 2024)

End‐to‐end speech‐denoising deep neural network based on residual‐attention gated linear units

  • Seon Man Kim

DOI
https://doi.org/10.1049/ell2.70020
Journal volume & issue
Vol. 60, no. 20
pp. n/a – n/a

Abstract

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Abstract In this letter, an improved gated linear unit (GLU) structure for end‐to‐end (E2E) speech enhancement is proposed. In the U‐Net structure, which is widely used as the foundational architecture for E2E deep neural network‐based speech denoising, the input noisy speech signal undergoes multiple layers of encoding and is compressed into essential potential representative information at the bottleneck. The latent information is then transmitted to the decoder stage for the restoration of the target clean speech. Among these approaches, CleanUNet, a prominent state‐of‐the‐art (SOTA) method, enhances temporal attention in latent space by employing multi‐head self‐attention. However, unlike the approach of applying the attention mechanism to the potentially compressed representative information of the bottleneck layer, the proposed method instead assigns the attention module to the GLU of each encoder/decoder block layer. The proposed method is validated by measuring short‐term objective speech intelligibility and sound quality. The objective evaluation results indicated that the proposed method using residual‐attention GLU outperformed existing methods using SOTA models such as FAIR‐denoiser and CleanUNet across signal‐to‐noise ratios ranging from 0 to 15 dB.

Keywords