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Improved Automatic Speech Recognition system by using compressed sensing signal reconstruction based on L0 and L1 estimation algorithms

机译:基于L0和L1估计算法使用压缩感测信号重建改进的自动语音识别系统

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This paper presents a way of improving the recognition rate of a typical Hidden Markov Model (HMM)-based Automatic Speech Recognition (ASR) system by integrating the l - least absolute deviation (LAD) algorithm and the l - least square (LS) algorithm in a framework designed to selectively use them based on the level of impulse noise present in speech signal. We present the overall architecture of the model, as well as experimental results and compare our enhanced noise-robust HMM-based ASR system with state-of-the-art proving the improvements brought by this approach as well as future directions of research.
机译:本文通过集成L - 最小绝对偏差(LAD)算法和L - 最小二乘(LS)算法,提高了一种提高典型隐马尔可夫模型(基于HMM)的自动语音识别(ASR)系统的识别率的方法在旨在基于语音信号中存在的脉冲噪声的水平选择性地使用它们的框架中。我们介绍了该模型的整体架构,以及实验结果,并比较了我们的增强型噪声 - 稳健的HMM的ASR系统,具有最新的证明这种方法所带来的改进以及未来的研究方向。

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