Hybrid Real- And Complex-Valued Neural Network Concept For Low-Complexity Phase-Aware Speech Enhancement
Luan Vinícius Fiorio, Alex Young, Ronald M. Aarts
公開日: 2025/9/25
Abstract
In this paper, we propose hybrid real- and complex-valued neural networks for speech enhancement. Real- or complex-valued models are either inefficient or present high complexity. We devise a straightforward design method for extending a real-valued network into its hybrid counterpart. Based on speech intelligibility and quality metrics, we compare the real, complex, and hybrid versions of a convolutional and a convolutional-recurrent architecture. The hybrid network consistently outperforms its counterparts with the same number of parameters. Additionally, the hybrid models' complexity in terms of multiply-accumulate operations is substantially lower than that of their counterparts.