Speaker Normalization for Self-supervised Speech Emotion Recognition
About
Large speech emotion recognition datasets are hard to obtain, and small datasets may contain biases. Deep-net-based classifiers, in turn, are prone to exploit those biases and find shortcuts such as speaker characteristics. These shortcuts usually harm a model's ability to generalize. To address this challenge, we propose a gradient-based adversary learning framework that learns a speech emotion recognition task while normalizing speaker characteristics from the feature representation. We demonstrate the efficacy of our method on both speaker-independent and speaker-dependent settings and obtain new state-of-the-art results on the challenging IEMOCAP dataset.
Itai Gat, Hagai Aronowitz, Weizhong Zhu, Edmilson Morais, Ron Hoory• 2022
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Speech Emotion Recognition | IEMOCAP Speaker-independent 5-fold cross-validation | WA74.2 | 19 | |
| Speech Emotion Recognition | IEMOCAP Speaker-dependent random train-test split | WA81 | 9 | |
| Speech Emotion Recognition | IEMOCAP Low-resource settings | AUC64.9 | 6 |
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