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A soft computing approach to improve the robustness of on-line ASR in previously unseen highly non-stationary acoustic environments

机译:一种软计算方法,可在以前看不见的高度非平稳声学环境中提高在线ASR的鲁棒性

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This paper presents a soft noise compensation algorithm in the feature space to improve the noise robustness of HMM-based on-line automatic speech recognition (ASR) in unknown highly non-stationary acoustic environments. Current hard computing techniques fail to track and compensate the non-stationary noises properly in previously unseen acoustic environments. The proposed soft noise compensation algorithm is based on a joint additive background noises and channel distortions compensation (JAC) technique in feature space. In this novel soft JAC (SJAC), we use an evolutionary dynamic multi-swarm particle swarm optimization (DMS-PSO)-based soft computing (SC) technique in the front-end, and a frame synchronous bias compensation technique in the back-end of the ASR, respectively, for frame adaptive modeling and compensation of the background additive noises and channel distortions in feature space that are highly non-linear and non-Gaussian. From the experimental results, we find that the proposed evolutionary DMS-PSO-based SJAC technique achieves significant improvement in recognition performance of on-line ASR compared to our previously developed baseline Bayesian on-line spectral change point detection (BOSCPD)-based SJAC technique when evaluated over the Aurora 2 speech database.
机译:本文提出了一种在特征空间中的软噪声补偿算法,以提高基于HMM的在线自动语音识别(ASR)在未知的高度非平稳声学环境中的噪声鲁棒性。当前的硬计算技术无法在先前看不见的声学环境中正确地跟踪和补偿非平稳噪声。提出的软噪声补偿算法基于特征空间中的联合加性背景噪声和通道失真补偿(JAC)技术。在这种新颖的软JAC(SJAC)中,我们在前端使用了基于演化动态多群粒子群优化(DMS-PSO)的软计算(SC)技术,在后端采用了帧同步偏差补偿技术在ASR的另一端分别进行帧自适应建模和功能高度非线性和非高斯的背景附加噪声和通道失真的补偿。从实验结果中,我们发现,与我们先前开发的基于基线贝叶斯在线光谱变化点检测(BOSCPD)的SJAC技术相比,基于DMS-PSO的进化SJAC技术在在线ASR识别性能上有了显着提高通过Aurora 2语音数据库进行评估时。

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