Robust speech recognition using probabilistic union models

J. Ming, P. Jančovič, F. J. Smith
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引用次数: 46

Abstract

This paper introduces a new statistical approach, namely the probabilistic union model, for speech recognition involving partial, unknown frequency-band corruption. Partial frequency-band corruption accounts for the effect of a family of real-world noises. Previous methods based on the missing feature theory usually require the identity of the noisy bands. This identification can be difficult for unexpected noise with unknown, time-varying band characteristics. The new model combines the local frequency-band information based on the union of random events, to reduce the dependence of the model on information about the noise. This model partially accomplishes the target: offering robustness to partial frequency-band corruption, while requiring no information about the noise. This paper introduces the theory and implementation of the union model, and is focused on several important advances. These new developments include a new algorithm for automatic order selection, a generalization of the modeling principle to accommodate partial feature stream corruption, and a combination of the union model with conventional noise reduction techniques to deal with a mixture of stationary noise and unknown, nonstationary noise. For the evaluation, we used the TIDIGITS database for speaker-independent connected digit recognition. The utterances were corrupted by various types of additive noise, stationary or time-varying, assuming no knowledge about the noise characteristics. The results indicate that the new model offers significantly improved robustness in comparison to other models.
基于概率联合模型的鲁棒语音识别
本文介绍了一种新的统计方法,即概率联合模型,用于涉及部分未知频带损坏的语音识别。部分频带损坏解释了一系列现实世界噪声的影响。以往基于缺失特征理论的方法通常需要对噪声带进行识别。对于具有未知时变频带特性的意外噪声,这种识别可能很困难。该模型结合了基于随机事件并集的局部频带信息,降低了模型对噪声信息的依赖。该模型部分实现了目标:对部分频带损坏提供鲁棒性,同时不需要有关噪声的信息。本文介绍了联合模型的理论和实现,重点介绍了联合模型的几个重要进展。这些新的发展包括一种新的自动顺序选择算法,一种一般化的建模原则,以适应部分特征流损坏,以及联合模型与传统降噪技术的结合,以处理平稳噪声和未知非平稳噪声的混合。为了评估,我们使用TIDIGITS数据库进行与说话人无关的连接数字识别。在不知道噪声特性的情况下,话语被各种类型的加性噪声(平稳的或时变的)所破坏。结果表明,与其他模型相比,新模型的鲁棒性显著提高。
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