Feature enhancement with a Reservoir-based Denoising Auto Encoder

A. Jalalvand, Kris Demuynck, J. Martens
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引用次数: 4

Abstract

Recently, automatic speech recognition has advanced significantly by the introduction of deep neural networks for acoustic modeling. However, there is no clear evidence yet that this does not come at the price of less generalization to conditions that were not present during training. On the other hand, acoustic modeling with Reservoir Computing (RC) did not offer improved clean speech recognition but it leads to good robustness against noise and channel distortions. In this paper, the aim is to establish whether adding feature denoising in the front-end can further improve the robustness of an RC-based recognizer, and if so, whether one can devise an RC-based Denoising Auto Encoder that outperforms a traditional denoiser like the ETSI Advanced Front-End. In order to answer these questions, experiments are conducted on the Aurora-2 benchmark.
基于库的去噪自动编码器的特征增强
近年来,由于引入深度神经网络进行声学建模,自动语音识别取得了显著进展。然而,目前还没有明确的证据表明,这并不是以对训练过程中没有出现的情况不那么一般化为代价的。另一方面,使用储层计算(RC)的声学建模并没有提供改进的干净语音识别,但它对噪声和信道失真具有良好的鲁棒性。本文的目的是确定在前端添加特征去噪是否可以进一步提高基于rc的识别器的鲁棒性,如果是这样,是否可以设计出一种基于rc的去噪自动编码器,其性能优于传统的去噪器,如ETSI高级前端。为了回答这些问题,在Aurora-2基准上进行了实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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