使用不同损失函数的语音增强性能比较评估

Seorim Hwang, Joon Byun, Young-Choel Park
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引用次数: 1

摘要

本文根据各种损失函数对基于深度神经网络的语音增强模型的性能进行了评估和比较。我们使用了一个复杂的网络,可以将语音的相位信息作为基线模型。作为损失函数,我们考虑了两类基本的损失函数;均方误差(MSE)和标度不变源噪声比(SI-SNR),以及两种类型的基于感知的损失函数,包括语音质量评估的感知度量(PMSQE)和对数梅尔谱(LMS)。性能比较是通过客观评估和听力测试与使用各种损失函数组合获得的输出进行的。测试结果表明,当基于感知的损失函数与MSE或SI-SNR相结合时,整体性能得到了改善,而基于感知的丢失函数,即使表现出较低的客观分数,在听力测试中也表现出更好的性能。
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Performance comparison evaluation of speech enhancement using various loss functions
This paper evaluates and compares the performance of the Deep Nerual Network (DNN)-based speech enhancement models according to various loss functions. We used a complex network that can consider the phase information of speech as a baseline model. As the loss function, we consider two types of basic loss functions; the Mean Squared Error (MSE) and the Scale-Invariant Source-to-Noise Ratio (SI-SNR), and two types of perceptualbased loss functions, including the Perceptual Metric for Speech Quality Evaluation (PMSQE) and the Log Mel Spectra (LMS). The performance comparison was performed through objective evaluation and listening tests with outputs obtained using various combinations of the loss functions. Test results show that when a perceptual-based loss function was combined with MSE or SI-SNR, the overall performance is improved, and the perceptual-based loss functions, even exhibiting lower objective scores showed better performance in the listening test.
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CiteScore
0.60
自引率
50.00%
发文量
1
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