生成式SPSS中最小二乘误差和Wasserstein判别器损失的谱加权混合

G. Degottex, M. Gales
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引用次数: 1

摘要

生成式网络可以根据其条件分布估计创建人工频谱,而不是像最小二乘(LS)解决方案那样只预测平均值。这是有希望的,因为已知LS预测器具有导致消声效应的过平滑特征。然而,建模整个分布而不是单个平均值需要更多的数据,因此也需要更多的计算资源。只有一个小时的记录,通常使用LS方法,结果频谱是嘈杂的,声音充满了伪影。在本文中,我们提出了一个新的损失函数,通过混合LS误差和用Wasserstein GAN训练的鉴别器的损失,同时通过频域对这种混合进行不同的加权。通过听力测试,我们表明,使用这种混合损耗,生成的频谱足够平滑,可以获得不错的感知质量。在让我们的源代码在网上可用的同时,我们也希望用更少的必要资源使生成网络更容易访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Spectrally Weighted Mixture of Least Square Error and Wasserstein Discriminator Loss for Generative SPSS
Generative networks can create an artificial spectrum based on its conditional distribution estimate instead of predicting only the mean value, as the Least Square (LS) solution does. This is promising since the LS predictor is known to oversmooth features leading to muffling effects. However, modeling a whole distribution instead of a single mean value requires more data and thus also more computational resources. With only one hour of recording, as often used with LS approaches, the resulting spectrum is noisy and sounds full of artifacts. In this paper, we suggest a new loss function, by mixing the LS error and the loss of a discriminator trained with Wasserstein GAN, while weighting this mixture differently through the frequency domain. Using listening tests, we show that, using this mixed loss, the generated spectrum is smooth enough to obtain a decent perceived quality. While making our source code available online, we also hope to make generative networks more accessible with lower the necessary resources.
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