Szu-Wei Fu, Cheng Yu, Tsun-An Hsieh, Peter Plantinga, Mirco Ravanelli, Xugang Lu, Yu Tsao
The discrepancy between the cost function used for training a speech enhancement model and human auditory perception usually makes the quality of enhanced speech unsatisfactory. Objective evaluation metrics which consider human perception can hence serve as a bridge to reduce the gap. Our previously proposed MetricGAN was designed to optimize objective metrics by connecting the metric with a discriminator. Because only the scores of the target evaluation functions are needed during training, the metrics can even be non-differentiable. In this study, we propose a MetricGAN+ in which three training techniques incorporating domain-knowledge of speech processing are proposed. With these techniques, experimental results on the VoiceBank-DEMAND dataset show that MetricGAN+ can increase PESQ score by 0.3 compared to the previous MetricGAN and achieve state-of-the-art results (PESQ score = 3.15).
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Speech Enhancement | VoiceBank + DEMAND | CBAK | 3.16 | MetricGAN+ |
| Speech Enhancement | VoiceBank + DEMAND | COVL | 3.64 | MetricGAN+ |
| Speech Enhancement | VoiceBank + DEMAND | CSIG | 4.14 | MetricGAN+ |
| Speech Enhancement | VoiceBank + DEMAND | PESQ (wb) | 3.15 | MetricGAN+ |