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Metric-Oriented Speech Enhancement Using Diffusion Probabilistic Model

Chen Chen, Yu‐Chen Hu, Weiwei Weng, Eng Siong Chng

202320 citationsDOI

Abstract

Deep neural network based speech enhancement technique focuses on learning a noisy-to-clean transformation supervised by paired training data. However, the task-specific evaluation metric (e.g., PESQ) is usually non-differentiable and can not be directly constructed in the training criteria. This mismatch between the training objective and evaluation metric likely results in sub-optimal performance. To alleviate it, we propose a metric-oriented speech enhancement method (MOSE), which leverages the recent advances in the diffusion probabilistic model and integrates a metric-oriented training strategy into its reverse process. Specifically, we design an actor-critic based framework that considers the evaluation metric as a posterior reward, thus guiding the reverse process to the metric-increasing direction. The experimental results demonstrate that MOSE obviously benefits from metric-oriented training and surpasses the generative baselines in terms of all evaluation metrics.

Topics & Concepts

Metric (unit)Computer sciencePESQProbabilistic logicPerformance metricArtificial intelligenceMachine learningSpeech enhancementProcess (computing)Transformation (genetics)Software metricSoftwareNoise reductionSoftware developmentBiochemistryManagementProgramming languageOperating systemSoftware qualityOperations managementGeneEconomicsChemistrySpeech and Audio ProcessingSpeech Recognition and SynthesisMusic and Audio Processing
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