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首页> 外文期刊>IEEE transactions on audio, speech and language processing >Switching Linear Dynamical Systems for Noise Robust Speech Recognition
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Switching Linear Dynamical Systems for Noise Robust Speech Recognition

机译:开关线性动力系统用于噪声鲁棒语音识别

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摘要

Real world applications such as hands-free dialling in cars may have to deal with potentially very noisy environments. Existing state-of-the-art solutions to this problem use feature-based HMMs, with a preprocessing stage to clean the noisy signal. However, the effect that raw signal noise has on the induced HMM features is poorly understood, and limits the performance of the HMM system. An alternative to feature-based HMMs is to model the raw signal, which has the potential advantage that including an explicit noise model is straightforward. Here we jointly model the dynamics of both the raw speech signal and the noise, using a Switching Linear Dynamical System (SLDS). The new model was tested on isolated digit utterances corrupted by Gaussian noise. Contrary to the Autoregressive HMM and its derivatives, which provides a model of uncorrupted raw speech, the SLDS is comparatively noise robust and also significantly outperforms a state-of-the-art feature-based HMM. The computational complexity of the SLDS scales exponentially with the length of the time series. To counter this we use Expectation Correction which provides a stable and accurate linear-time approximation for this important class of models, aiding their further application in acoustic modeling.
机译:诸如免提拨号等现实世界中的应用可能必须处理可能非常嘈杂的环境。现有的最先进的解决方案使用基于功能的HMM,并具有预处理阶段以清除噪声信号。但是,原始信号噪声对感应HMM功能的影响了解得很少,并限制了HMM系统的性能。基于特征的HMM的另一种选择是对原始信号进行建模,这具有潜在的优势,即包括显式噪声模型非常简单。在这里,我们使用切换线性动力系统(SLDS)共同对原始语音信号和噪声的动力学进行建模。对新模型进行了高斯噪声破坏的孤立数字发声测试。与提供无损原始语音模型的自回归HMM及其衍生产品相反,SLDS具有相对较强的噪声鲁棒性,并且其性能明显优于基于最新功能的HMM。 SLDS的计算复杂度随时间序列的长度呈指数增长。为了解决这个问题,我们使用了期望校正,它为这一重要模型提供了稳定且准确的线性时间近似值,有助于它们在声学建模中的进一步应用。

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