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首页> 外文期刊>IEEE signal processing letters >Learning With Learned Loss Function: Speech Enhancement With Quality-Net to Improve Perceptual Evaluation of Speech Quality
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Learning With Learned Loss Function: Speech Enhancement With Quality-Net to Improve Perceptual Evaluation of Speech Quality

机译:学习损失职能学习:语音增强质量网改善语音质量的感知评价

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摘要

Utilizing a human-perception-related objective function to train a speech enhancement model has become a popular topic recently. The main reason is that the conventional mean squared error (MSE) loss cannot represent auditory perception well. One of the typical human-perception-related metrics, which is the perceptual evaluation of speech quality (PESQ), has been proven to provide a high correlation to the quality scores rated by humans. Owing to its complex and non-differentiable properties, however, the PESQ function may not be used to optimize speech enhancement models directly. In this study, we propose optimizing the enhancement model with an approximated PESQ function, which is differentiable and learned from the training data. The experimental results show that the learned surrogate function can guide the enhancement model to further boost the PESQ score (increase of 0.18 points compared to the results trained with MSE loss) and maintain the speech intelligibility.
机译:利用与人类感知相关的目标函数培养语音增强模型已成为最近的流行主题。主要原因是传统的平均平方误差(MSE)损失不能很好地表示听觉感知。已被证明是言语质量(PESQ)感知评估的典型人类感知相关的指标之一,以提供与人类评分的质量分数的高相关性。然而,由于其复杂和非可分性的特性,PESQ函数不得用于直接优化语音增强型号。在这项研究中,我们提出了利用近似的PESQ函数优化增强模型,这是可分辨的和从训练数据中学习的。实验结果表明,学习的代理功能可以引导增强模型进一步提高PESQ评分(与用MSE损失训练的结果相比,增加0.18分)并保持语音可懂度。

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