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首页> 外文期刊>IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences >Adaptive Nonlinear Regression Using Multiple Distributed Microphones for In-Car Speech Recognition
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Adaptive Nonlinear Regression Using Multiple Distributed Microphones for In-Car Speech Recognition

机译:使用多个分布式麦克风的自适应非线性回归用于车内语音识别

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In this paper, we address issues in improving hands-free speech recognition performance in different car environments using multiple spatially distributed microphones. In the previous work, we proposed the multiple linear regression of the log spectra (MRLS) for estimating the log spectra of speech at a close-talking microphone. In this paper, the concept is extended to nonlinear regressions. Regressions in the cepstrum domain are also investigated. An effective algorithm is developed to adapt the regression weights automatically to different noise environments. Compared to the nearest distant microphone and adaptive beamformer (Generalized Sidelobe Canceller), the proposed adaptive nonlinear regression approach shows an advantage in the average relative word error rate (WER) reductions of 58.5% and 10.3%, respectively, for isolated word recognition under 15 real car environments.
机译:在本文中,我们解决了使用多个空间分布的麦克风在不同汽车环境中提高免提语音识别性能的问题。在先前的工作中,我们提出了对数谱(MRLS)的多元线性回归,用于估计近距离麦克风的语音对数谱。在本文中,该概念扩展到非线性回归。还研究了倒频谱域中的回归。开发了一种有效的算法来自动使回归权重适应不同的噪声环境。与最近的远距离麦克风和自适应波束形成器(广义旁瓣抵消器)相比,所提出的自适应非线性回归方法显示出在15岁以下的孤立单词识别方面,平均相对单词错误率(WER)分别降低了58.5%和10.3%。真实的汽车环境。

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