Residual-block neural network with auxiliary speaker embeddings from clean recordings achieves 4.79 dB SDR, 8.44 dB SAR and 7.11 dB SIR on VoxCeleb for single-channel two-speaker separation.
Single-Channel Speech Separation with Auxiliary Speaker Embeddings
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abstract
We present a novel source separation model to decompose asingle-channel speech signal into two speech segments belonging to two different speakers. The proposed model is a neural network based on residual blocks, and uses learnt speaker embeddings created from additional clean context recordings of the two speakers as input to assist in attributing the different time-frequency bins to the two speakers. In experiments, we show that the proposed model yields good performance in the source separation task, and outperforms the state-of-the-art baselines. Specifically, separating speech from the challenging VoxCeleb dataset, the proposed model yields 4.79dB signal-to-distortion ratio, 8.44dB signal-to-artifacts ratio and 7.11dB signal-to-interference ratio.
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cs.SD 1years
2019 1verdicts
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Single-Channel Speech Separation with Auxiliary Speaker Embeddings
Residual-block neural network with auxiliary speaker embeddings from clean recordings achieves 4.79 dB SDR, 8.44 dB SAR and 7.11 dB SIR on VoxCeleb for single-channel two-speaker separation.