Sparse, Hierarchical and Semi-Supervised Base Learning for Monaural Enhancement of Conversational Speech
Speech Communication; 10. ITG Symposium(2012)
摘要
We address the learning of noise bases in a monaural speaker-independent speech enhancement framework based on non-negative matrix factorization. Bases are estimated from training data in batch processing by means of hierarchical and non-hierarchical sparse coding, or determined during the speech enhancement process based on the divergence of the observed noisy speech signal and the speech base. In extensive test runs on the Buckeye corpus of highly spontaneous speech and the CHiME corpus of nonstationary real-life noise, we observe that semi-supervised learning of noise bases leads to overall best results while a-priori learning of noise bases is useful to speed up computation.
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