CogSR: Semantic-Aware Speech Super-Resolution via Chain-of-Thought Guided Flow Matching
About
Applying speech super-resolution (SR) to recordings with severely low sampling rates is a critical challenge in digital archiving and investigative audio recovery. In these scenarios, the input lacks essential acoustic cues. Consequently, existing generative models often fail; without sufficient context, they hallucinate phonetic content, guessing words based on probability rather than meaning. To address this, we propose CogSR, a framework designed specifically for high-precision, offline restoration. Our approach shifts the focus from simple signal mapping to cognitive reconstruction. By integrating a Large Audio-Language Model, we employ Chain-of-Thought reasoning to act as a semantic anchor, while explicit acoustic priors ensure the speaker's identity remains consistent. This guides a Rectified Flow backbone to synthesize high-frequency details that are not only realistic but linguistically accurate. Evaluations show that CogSR effectively eliminates ambiguity in severe degradation regimes, making it a robust solution for restoring high-value legacy and surveillance audio.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Audio Super-Resolution | VCTK 2 kHz input sampling rate (test) | WER23.12 | 7 | |
| Audio Super-Resolution | VCTK 4 kHz input sampling rate (test) | WER4.2 | 7 | |
| Speech Super-Resolution (4 kHz to 44.1 kHz) | VCTK 0.92 (test) | MOS-Q4.2 | 5 |