Rethinking Training Targets, Architectures and Data Quality for Universal Speech Enhancement
About
Universal Speech Enhancement (USE) aims to restore speech quality under diverse degradation conditions while preserving signal fidelity. Despite recent progress, key challenges in training target selection, the distortion--perception tradeoff, and data curation remain unresolved. In this work, we systematically address these three overlooked problems. First, we revisit the conventional practice of using early-reflected speech as the dereverberation target and show that it can degrade perceptual quality and downstream ASR performance. We instead demonstrate that time-shifted anechoic clean speech provides a superior learning target. Second, guided by the distortion--perception tradeoff theory, we propose a simple two-stage framework that achieves minimal distortion under a given level of perceptual quality. Third, we analyze the trade-off between training data scale and quality for USE, revealing that training on large uncurated corpora imposes a performance ceiling, as models struggle to remove subtle artifacts. Our method achieves state-of-the-art performance on the URGENT 2025 non-blind test set and exhibits strong language-agnostic generalization, making it effective for improving TTS training data. Code and models will be released upon acceptance.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Speech Enhancement | URGENT Challenge 2025 (non-blind test) | DNSMOS3.06 | 19 | |
| Universal Speech Enhancement | URGENT non-blind 2025 (test) | DNSMOS3.26 | 9 | |
| Speech Enhancement | FLEURS Italian/it_it (test) | DNSMOS3.27 | 4 | |
| Speech Enhancement | FLEURS Dutch/nl_nl (test) | DNSMOS3.28 | 4 | |
| Speech Enhancement | FLEURS Japanese ja_jp (test) | DNSMOS3.18 | 4 | |
| Speech Enhancement | URGENT non-blind 48 kHz 2025 (test) | DNSMOS3.31 | 3 | |
| Speech Enhancement | URGENT non-blind 44.1 kHz 2025 (test) | DNSMOS3.32 | 3 |