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Inventory-style speech enhancement with uncertainty-of-observation techniques

机译:利用不确定性观察技术进行库存式语音增强

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We present a new method for inventory-style speech enhancement that significantly improves over earlier approaches [1]. Inventory-style enhancement attempts to resynthesize a clean speech signal from a noisy signal via corpus-based speech synthesis. The advantage of such an approach is that one is not bound to trade noise suppression against signal distortion in the same way that most traditional methods do. A significant improvement in perceptual quality is typically the result. Disadvantages of this new approach, however, include speaker dependency, increased processing delays, and the necessity of substantial system training. Earlier published methods relied on a-priori knowledge of the expected noise type during the training process [1]. In this paper we present a new method that exploits uncertainty-of-observation techniques to circumvent the need for noise specific training. Experimental results show that the new method is not only able to match, but outperform the earlier approaches in perceptual quality.
机译:我们提出了一种清单样式语音增强的新方法,该方法大大改善了早期方法[1]。清单式增强尝试通过基于语料库的语音合成从嘈杂的信号中重新合成干净的语音信号。这种方法的优点是,不必像大多数传统方法一样,将噪声抑制与信号失真相提并论。结果通常是感知质量的显着改善。但是,这种新方法的缺点包括说话者依赖性,增加的处理延迟以及必须进行大量的系统培训。较早发表的方法在训练过程中依赖于预期噪声类型的先验知识[1]。在本文中,我们提出了一种新的方法,该方法利用观测不确定性技术来规避对噪声的专门训练。实验结果表明,该新方法不仅能够匹配,而且在感知质量上也优于早期方法。

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