English

CA-SSLR: Condition-Aware Self-Supervised Learning Representation for Generalized Speech Processing

Audio and Speech Processing 2024-12-06 v1 Computation and Language Machine Learning Sound

Abstract

We introduce Condition-Aware Self-Supervised Learning Representation (CA-SSLR), a generalist conditioning model broadly applicable to various speech-processing tasks. Compared to standard fine-tuning methods that optimize for downstream models, CA-SSLR integrates language and speaker embeddings from earlier layers, making the SSL model aware of the current language and speaker context. This approach reduces the reliance on input audio features while preserving the integrity of the base SSLR. CA-SSLR improves the model's capabilities and demonstrates its generality on unseen tasks with minimal task-specific tuning. Our method employs linear modulation to dynamically adjust internal representations, enabling fine-grained adaptability without significantly altering the original model behavior. Experiments show that CA-SSLR reduces the number of trainable parameters, mitigates overfitting, and excels in under-resourced and unseen tasks. Specifically, CA-SSLR achieves a 10% relative reduction in LID errors, a 37% improvement in ASR CER on the ML-SUPERB benchmark, and a 27% decrease in SV EER on VoxCeleb-1, demonstrating its effectiveness.

Keywords

Cite

@article{arxiv.2412.04425,
  title  = {CA-SSLR: Condition-Aware Self-Supervised Learning Representation for Generalized Speech Processing},
  author = {Yen-Ju Lu and Jing Liu and Thomas Thebaud and Laureano Moro-Velazquez and Ariya Rastrow and Najim Dehak and Jesus Villalba},
  journal= {arXiv preprint arXiv:2412.04425},
  year   = {2024}
}

Comments

38th Conference on Neural Information Processing Systems (NeurIPS 2024)

R2 v1 2026-06-28T20:24:37.881Z