Bai Mingsian R, Hsieh Ping-Ju, Hur Kur-Nan
Department of Mechanical Engineering, National Chiao-Tung University, Hsin-Chu, Taiwan.
J Acoust Soc Am. 2009 Feb;125(2):934-43. doi: 10.1121/1.3050292.
The performance of the minimum mean-square error noise reduction (MMSE-NR) algorithm in conjunction with time-recursive averaging (TRA) for noise estimation is found to be very sensitive to the choice of two recursion parameters. To address this problem in a more systematic manner, this paper proposes an optimization method to efficiently search the optimal parameters of the MMSE-TRA-NR algorithms. The objective function is based on a regression model, whereas the optimization process is carried out with the simulated annealing algorithm that is well suited for problems with many local optima. Another NR algorithm proposed in the paper employs linear prediction coding as a preprocessor for extracting the correlated portion of human speech. Objective and subjective tests were undertaken to compare the optimized MMSE-TRA-NR algorithm with several conventional NR algorithms. The results of subjective tests were processed by using analysis of variance to justify the statistic significance. A post hoc test, Tukey's Honestly Significant Difference, was conducted to further assess the pairwise difference between the NR algorithms.
研究发现,最小均方误差降噪(MMSE-NR)算法与用于噪声估计的时间递归平均(TRA)相结合时,其性能对两个递归参数的选择非常敏感。为了更系统地解决这个问题,本文提出了一种优化方法,以有效地搜索MMSE-TRA-NR算法的最优参数。目标函数基于回归模型,而优化过程则使用模拟退火算法进行,该算法非常适合具有许多局部最优解的问题。本文提出的另一种降噪算法采用线性预测编码作为预处理器,用于提取人类语音的相关部分。进行了客观和主观测试,以将优化后的MMSE-TRA-NR算法与几种传统降噪算法进行比较。主观测试结果通过方差分析进行处理,以证明统计显著性。进行了事后检验,即Tukey的真实显著性差异检验,以进一步评估降噪算法之间的两两差异。