基于预测线性变换的噪声鲁棒语音识别

M. Gales, R. V. Dalen
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引用次数: 31

摘要

众所周知,背景噪声的加入会改变元素之间的相关性,例如,MFCC特征向量。然而,基于标准模型的补偿技术并没有改变对角协方差矩阵高斯混合模型估计的特征空间。解决这一问题的一种方法是采用全变换的联合不确定性解码(JUD)。不幸的是,这导致解码期间的高计算成本。本文对比了两种近似全JUD的方法,同时降低了计算成本。两者都使用预测线性变换来修改特征空间:基于自适应的线性变换,其中模型参数被限制为与原始清洁系统相同;以及精确的矩阵建模方法,特别是半捆绑协方差矩阵。这些预测转换是使用来自完整的JUD转换而不是噪声数据的统计数据来估计的。在AURORA 2和一个受噪声干扰的资源管理任务上对这些方案进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive linear transforms for noise robust speech recognition
It is well known that the addition of background noise alters the correlations between the elements of, for example, the MFCC feature vector. However, standard model-based compensation techniques do not modify the feature-space in which the diagonal covariance matrix Gaussian mixture models are estimated. One solution to this problem, which yields good performance, is joint uncertainty decoding (JUD) with full transforms. Unfortunately, this results in a high computational cost during decoding. This paper contrasts two approaches to approximating full JUD while lowering the computational cost. Both use predictive linear transforms to modify the feature-space: adaptation-based linear transforms, where the model parameters are restricted to be the same as the original clean system; and precision matrix modelling approaches, in particular semi-tied covariance matrices. These predictive transforms are estimated using statistics derived from the full JUD transforms rather than noisy data. The schemes are evaluated on AURORA 2 and a noise-corrupted resource management task.
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