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Improving automatic speech recognition in noise by energy normalization and signal resynthesis

机译:通过能量归一化和信号再合成改善噪声中的自动语音识别

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This paper presents the contribution of energy normalization technique in automatic speech recognition in babble noise, where machine assumes that speech and noise have the same level of energy, therefore loudness. Similarly, loudness of target speech and noise is an important contributing factor while recognizing speech by humans in everyday conditions. Louder speech is better recognized than non louder speech by humans, even if they are approaching to the listeners at a same signal to noise ratio (SNR). This phenomenon has been tested over the machines and the recognition performance roughly varies from 75% to 90% across a wide range of SNRs. In exchange, human recognition performance is more SNR-dependent: it varies from 30% to 95%. By using energy normalization, the machines have a poor recognition rate in average in comparison to the performance of humans in less noisy conditions (positive SNR), but tend to outperform humans in high noisy conditions (negative SNR like −4dB, −6dB). It is also confirmed by this study that formant processing has no significant effect in recognizing speech in noise. Subsequently, it implies that formant based vocal tract length normalization is unable to improve the performance of machines in noise.
机译:本文提出了能量归一化技术在ba语噪声中自动语音识别中的贡献,其中机器假设语音和噪声具有相同的能量水平,因此响度也是如此。类似地,目标语音和噪声的响度是在日常条件下识别人类语音时的重要贡献因素。即使人们以相同的信噪比(SNR)接近聆听者,也比人类的非响亮语音更好地识别响亮的语音。这种现象已经在机器上进行了测试,在宽范围的SNR范围内,识别性能大约从75%到90%不等。作为交换,人类识别性能更多地取决于SNR:从30%到95%不等。通过使用能量归一化,与在低噪声条件下(人为SNR)的人的性能相比,这些机器的平均识别率较差,但是在高噪声条件下(人为-4dB,-6dB的SNR)则要优于人类。这项研究还证实,共振峰处理对识别语音中的语音没有显着影响。随后,这意味着基于共振峰的声道长度归一化无法提高机器在噪声中的性能。

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