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Robust features derived from temporal trajectory filtering for speech recognition under the corruption of additive and convolutional noises

机译:从时间轨迹滤波得到的鲁棒特征在加性和卷积噪声破坏下用于语音识别

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This paper presents a novel method using robust features for speech recognition when the speech signal is corrupted by additive and convolutional noises. This method is conceptually simple and easy to be implemented. The additive noise and the convolutional noise are removed by temporal trajectory filtering in the autocorrelation domain and cepstral domain, respectively. No prior information of noise corruption is necessary. A task of multi-speaker isolated digit recognition is conducted to demonstrate the effectiveness of using these robust features. The cases of the channel filtered speech signal corrupted by additive white noise and color noise are tested. Experimental results show that significant improvements can be achieved as compared with some traditional features.
机译:本文提出了一种新的方法,当语音信号被加性和卷积噪声破坏时,使用鲁棒特征进行语音识别。该方法从概念上讲是简单易行的。通过在自相关域和倒谱域中的时间轨迹滤波分别去除了加性噪声和卷积噪声。无需事先提供有关噪声破坏的信息。进行了多扬声器隔离数字识别的任务,以演示使用这些强大功能的有效性。测试了信道滤波后的语音信号被加性白噪声和色噪声破坏的情况。实验结果表明,与某些传统功能相比,可以实现显着的改进。

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