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arxiv: 2110.04378 · v1 · pith:BSB4SVUU · submitted 2021-10-08 · eess.AS · cs.LG· cs.SD

Performance optimizations on deep noise suppression models

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classification eess.AS cs.LGcs.SD
keywords modeldeepinferencequalityspeedupmagnitudenoiseperformance
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We study the role of magnitude structured pruning as an architecture search to speed up the inference time of a deep noise suppression (DNS) model. While deep learning approaches have been remarkably successful in enhancing audio quality, their increased complexity inhibits their deployment in real-time applications. We achieve up to a 7.25X inference speedup over the baseline, with a smooth model performance degradation. Ablation studies indicate that our proposed network re-parameterization (i.e., size per layer) is the major driver of the speedup, and that magnitude structured pruning does comparably to directly training a model in the smaller size. We report inference speed because a parameter reduction does not necessitate speedup, and we measure model quality using an accurate non-intrusive objective speech quality metric.

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