基于小功率增强算法的鲁棒语音识别

Chanwoo Kim, Kshitiz Kumar, R. Stern
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引用次数: 23

摘要

本文提出了一种称为小功率增强(SPB)的噪声鲁棒性算法。我们观察到,在谱域中,功率较小的时频箱受加性噪声的影响更大。处理该问题的传统方法是从测试话语中估计噪声并进行归一化或减法处理。相比之下,在我们的工作中,我们有意用小能量来提高训练和测试数据集的时频箱的功率。由于功率增强后功率小的时频箱不再存在,因此干净测试集和损坏测试集之间的频谱失真减小。这种类型的小功率提升也与生理非线性高度相关。我们发现,当进行小功率升压时,适当的加权平滑变得非常重要。我们的实验结果表明,这个简单的想法对非常困难的噪声环境(如背景音乐的破坏)非常有帮助。
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Robust speech recognition using a Small Power Boosting algorithm
In this paper, we present a noise robustness algorithm called Small Power Boosting (SPB). We observe that in the spectral domain, time-frequency bins with smaller power are more affected by additive noise. The conventional way of handling this problem is estimating the noise from the test utterance and doing normalization or subtraction. In our work, in contrast, we intentionally boost the power of time-frequency bins with small energy for both the training and testing datasets. Since time-frequency bins with small power no longer exist after this power boosting, the spectral distortion between the clean and corrupt test sets becomes reduced. This type of small power boosting is also highly related to physiological nonlinearity. We observe that when small power boosting is done, suitable weighting smoothing becomes highly important. Our experimental results indicate that this simple idea is very helpful for very difficult noisy environments such as corruption by background music.
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