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Switching Linear Dynamic Models for Noise Robust In-Car Speech Recognition

机译:开关线性动力学模型用于噪声鲁棒的车内语音识别

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Performance of speech recognition systems strongly degrades in the presence of background noise, like the driving noise in the interior of a car. We compare two different Kalman filtering approaches which attempt to improve noise robustness: Switching Linear Dynamic Models (SLDM) and Autoregressive Switching Linear Dynamical Systems (AR-SLDS). Unlike previous works which are restricted on considering white noise, we evaluate the modeling concepts in a noisy speech recognition task where also colored noise produced through different driving conditions and car types is taken into account. Thereby we demonstrate that speech enhancement based on Kalman filtering prevails over all standard de-noising techniques considered herein, such as Wiener filtering, Histogram Equalization, and Unsupervised Spectral Subtraction.
机译:语音识别系统的性能在存在背景噪音(例如汽车内部的行驶噪音)的情况下会大大降低。我们比较了两种尝试提高噪声鲁棒性的卡尔曼滤波方法:交换线性动态模型(SLDM)和自回归交换线性动态系统(AR-SLDS)。与以前的工作仅限于考虑白噪声的工作不同,我们在嘈杂的语音识别任务中评估建模概念,其中还要考虑由于不同的驾驶条件和车型而产生的有色噪声。因此,我们证明了基于卡尔曼滤波的语音增强技术胜于本文考虑的所有标准降噪技术,例如维纳滤波,直方图均衡化和无监督频谱减法。

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