基于迭代随机逼近的非平稳噪声递归估计鲁棒语音识别

L. Deng, J. Droppo, A. Acero
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引用次数: 121

摘要

本文提出了一种新的递归估计非平稳噪声的算法,并成功地将该算法应用于噪声归一化SPLICE的语音特征增强框架中,用于鲁棒语音识别。噪声估计算法利用了倒谱域声环境的非线性模型。该算法的核心是创新的迭代随机逼近技术,它改进了对所涉及的非线性的分段线性逼近,从而提高了噪声估计的准确性。我们报告了基于splice的综合实验,使用迭代随机逼近的结果对AURORA2任务进行噪声鲁棒性语音识别。在其他条件相同的情况下,与传统的MMSE噪声估计算法进行了比较,证明了新技术的有效性。在噪声归一化SPLICE框架下,采用迭代随机逼近进行递归噪声估计,在多条件训练模式下,与不加语音增强的标准倒频谱和AURORA2提供的基线HMM相比,错误率分别降低了27.9%和67.4%。这些是2001年9月AURORA2评价的清洁培训类别中表现最好的。在设计更好的HMM系统后,两种训练模式使用相同噪声估计的相对误差率分别提高到48.40%和76.86%。实验结果表明,使用新引入的迭代对改进早期的随机逼近技术至关重要,并显示了噪声估计算法的性能对算法中嵌入的遗忘因子的敏感性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recursive estimation of nonstationary noise using iterative stochastic approximation for robust speech recognition
We describe a novel algorithm for recursive estimation of nonstationary acoustic noise which corrupts clean speech, and a successful application of the algorithm in the speech feature enhancement framework of noise-normalized SPLICE for robust speech recognition. The noise estimation algorithm makes use of a nonlinear model of the acoustic environment in the cepstral domain. Central to the algorithm is the innovative iterative stochastic approximation technique that improves piecewise linear approximation to the nonlinearity involved and that subsequently increases the accuracy for noise estimation. We report comprehensive experiments on SPLICE-based, noise-robust speech recognition for the AURORA2 task using the results of iterative stochastic approximation. The effectiveness of the new technique is demonstrated in comparison with a more traditional, MMSE noise estimation algorithm under otherwise identical conditions. The word error rate reduction achieved by iterative stochastic approximation for recursive noise estimation in the framework of noise-normalized SPLICE is 27.9% for the multicondition training mode, and 67.4% for the clean-only training mode, respectively, compared with the results using the standard cepstra with no speech enhancement and using the baseline HMM supplied by AURORA2. These represent the best performance in the clean-training category of the September-2001 AURORA2 evaluation. The relative error rate reduction achieved by using the same noise estimate is increased to 48.40% and 76.86%, respectively, for the two training modes after using a better designed HMM system. The experimental results demonstrated the crucial importance of using the newly introduced iterations in improving the earlier stochastic approximation technique, and showed sensitivity of the noise estimation algorithm's performance to the forgetting factor embedded in the algorithm.
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