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Disentangled Representation Learning for Environment-agnostic Speaker Recognition

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This work presents a framework based on feature disentanglement to learn speaker embeddings that are robust to environmental variations. Our framework utilises an auto-encoder as a disentangler, dividing the input speaker embedding into components related to the speaker and other residual information. We employ a group of objective functions to ensure that the auto-encoder's code representation - used as the refined embedding - condenses only the speaker characteristics. We show the versatility of our framework through its compatibility with any existing speaker embedding extractor, requiring no structural modifications or adaptations for integration. We validate the effectiveness of our framework by incorporating it into two popularly used embedding extractors and conducting experiments across various benchmarks. The results show a performance improvement of up to 16%. We release our code for this work to be available https://github.com/kaistmm/voxceleb-disentangler

KiHyun Nam, Hee-Soo Heo, Jee-weon Jung, Joon Son Chung• 2024

Related benchmarks

TaskDatasetResultRank
Speaker VerificationVoxCeleb1 (Vox1-O)
EER0.82
105
Speaker VerificationVoxCeleb1 extended
EER1.15
17
Speaker VerificationVoxCeleb1 hard (H)
EER2.4
17
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