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A statistical pattern recognition approach to robust recursiveidentification of nonstationary AR model of speech productionsystem

机译:统计模型识别方法用于语音生产系统非平稳AR模型的鲁棒递归识别

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摘要

We propose a new robust recursive procedure based on the weighted recursive least squares (WRLS) algorithm with variable forgetting factor (VFF) and frame-based quadratic classifier for identification of nonstationary AR model of speech. Two versions of the frame-based quadratic classifier design procedure are elaborated upon. Experimental results are obtained in analyzing speech signal on voiced and mixed excitation frames
机译:我们提出了一种新的鲁棒递归程序,该方法基于具有可变遗忘因子(VFF)的加权递归最小二乘(WRLS)算法和基于帧的二次分类器,用于识别语音的非平稳AR模型。详细阐述了基于帧的二次分类器设计过程的两个版本。在分析有声和混合激励帧上的语音信号时获得实验结果

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