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An HMM Compensation Approach Using Unscented Transformation for Noisy Speech Recognition

机译:基于无味变换的HMM补偿方法用于噪声语音识别

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摘要

The performance of current HMM-based automatic speech recognition (ASR) systems degrade significantly in real-world applications where there exist mismatches between training and testing conditions caused by factors such as mismatched signal capturing and transmission channels and additive environmental noises. Among many approaches proposed previously to cope with the above robust ASR problem, two notable HMM compensation approaches are the so-called Parallel Model Combination (PMC) and Vector Taylor Series (VTS) approaches, respectively. In this paper, we introduce a new HMM compensation approach using a technique called Unscented Transformation (UT). As a first step, we have studied three implementations of the UT approach with different computational complexities for noisy speech recognition, and evaluated their performance on Aurora2 connected digits database. The UT approaches achieve significant improvements in recognition accuracy compared to log-normal-approximation-based PMC and first-order-approximation-based VTS approaches.
机译:当前的基于HMM的自动语音识别(ASR)系统的性能在实际应用中会显着降低,在实际应用中,训练和测试条件之间存在不匹配的情况,这些不匹配是由诸如信号捕获和传输通道不匹配以及附加环境噪声等因素引起的。在先前为解决上述鲁棒ASR问题而提出的许多方法中,两种值得注意的HMM补偿方法分别是所谓的并行模型组合(PMC)和矢量泰勒级数(VTS)方法。在本文中,我们介绍了一种使用称为无味变换(UT)的技术的新型HMM补偿方法。第一步,我们研究了具有不同计算复杂度的UT方法的三种实现方式,用于嘈杂的语音识别,并在Aurora2连接数字数据库上评估了它们的性能。与基于对数正态近似的PMC方法和基于一阶近似的VTS方法相比,UT方法在识别精度上有显着提高。

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