TridentSE: Guiding Speech Enhancement with 32 Global Tokens
About
In this paper, we present TridentSE, a novel architecture for speech enhancement, which is capable of efficiently capturing both global information and local details. TridentSE maintains T-F bin level representation to capture details, and uses a small number of global tokens to process the global information. Information is propagated between the local and the global representations through cross attention modules. To capture both inter- and intra-frame information, the global tokens are divided into two groups to process along the time and the frequency axis respectively. A metric discriminator is further employed to guide our model to achieve higher perceptual quality. Even with significantly lower computational cost, TridentSE outperforms a variety of previous speech enhancement methods, achieving a PESQ of 3.47 on VoiceBank+DEMAND dataset and a PESQ of 3.44 on DNS no-reverb test set. Visualization shows that the global tokens learn diverse and interpretable global patterns.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Speech Enhancement | DNS no-reverb 2020 (test) | PESQ (WB)3.44 | 20 | |
| Speech Enhancement | DNS with reverb 2020 (test) | PESQ-WB3.5 | 16 |