Personalized PercepNet: Real-time, Low-complexity Target Voice Separation and Enhancement
The presence of multiple talkers in the surrounding environment poses a difficult challenge for real-time speech communication systems considering the constraints on network size and complexity. In this paper, we present Personalized PercepNet, a real-time speech enhancement model that separates a t...
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Zusammenfassung: | The presence of multiple talkers in the surrounding environment poses a
difficult challenge for real-time speech communication systems considering the
constraints on network size and complexity. In this paper, we present
Personalized PercepNet, a real-time speech enhancement model that separates a
target speaker from a noisy multi-talker mixture without compromising on
complexity of the recently proposed PercepNet. To enable speaker-dependent
speech enhancement, we first show how we can train a perceptually motivated
speaker embedder network to produce a representative embedding vector for the
given speaker. Personalized PercepNet uses the target speaker embedding as
additional information to pick out and enhance only the target speaker while
suppressing all other competing sounds. Our experiments show that the proposed
model significantly outperforms PercepNet and other baselines, both in terms of
objective speech enhancement metrics and human opinion scores. |
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DOI: | 10.48550/arxiv.2106.04129 |