Improving generalizability of distilled self-supervised speech processing models under distorted settings

October 14, 2022 ยท Declared Dead ยท ๐Ÿ› Spoken Language Technology Workshop

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Authors Kuan-Po Huang, Yu-Kuan Fu, Tsu-Yuan Hsu, Fabian Ritter Gutierrez, Fan-Lin Wang, Liang-Hsuan Tseng, Yu Zhang, Hung-yi Lee arXiv ID 2210.07978 Category cs.SD: Sound Cross-listed cs.CL, eess.AS Citations 15 Venue Spoken Language Technology Workshop Last Checked 3 months ago
Abstract
Self-supervised learned (SSL) speech pre-trained models perform well across various speech processing tasks. Distilled versions of SSL models have been developed to match the needs of on-device speech applications. Though having similar performance as original SSL models, distilled counterparts suffer from performance degradation even more than their original versions in distorted environments. This paper proposes to apply Cross-Distortion Mapping and Domain Adversarial Training to SSL models during knowledge distillation to alleviate the performance gap caused by the domain mismatch problem. Results show consistent performance improvements under both in- and out-of-domain distorted setups for different downstream tasks while keeping efficient model size.
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