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An Environment Model-based Robust Speech Recognition

机译:基于环境模型的强大语音识别

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In this paper, a new approach named environmental discrimination learning (DEL) is proposed to remove the effects of the environment noises including the additive noise and the channel distortions. This method optimizes the environment parameters by the minimum classification error (MCE) criterion which trains the parameters of a given class dependently on the whole classes. The EDL approach utilizes more about hte information between different classes to optimize the environment parameters, therefore, it can minimize the error rate. And a generalized probabilistic descent (GPD) algorithm is adopted for discriminative training the environment parameters. A speaker independent isolated word recognition system based on whole word-HMM model is used to evalaute the proposed approach. Experimental resutls show that the proposed method achieves significant improvement of recognition performance.
机译:在本文中,提出了一种名为环境辨别学习(Del)的新方法,以消除环境噪声的影响,包括添加剂噪声和通道失真。此方法通过最小分类错误(MCE)标准优化环境参数,其依赖于整个类别训练给定类的参数。 EDL方法在不同类之间提供更多关于HTE信息以优化环境参数,因此,它可以最小化误差率。采用广义概率下降(GPD)算法用于鉴别训练环境参数。基于整个Word-HMM模型的扬声器独立的隔离字识别系统用于评估所提出的方法。实验重构表明,该方法达到了识别性能的显着提高。

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