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Arabic phonetic features recognition using modular connectionist architectures

机译:阿拉伯语音功能识别使用模块化连接架构

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This paper proposes an approach for reliably identifying complex Arabic phonemes in continuous speech. This is proposed to be done by a mixture of artificial neural experts. These experts are typically time delay neural networks using an original version of the autoregressive backpropagation algorithm (AR-TDNN). A module using specific cues generated by an ear model operates the speech phone segmentation. Perceptual linear predictive (PLP) coefficients, energy, zero crossing rate and their derivatives are used as input parameters. Serial and parallel architectures of AR-TDNN have been implemented and confronted to a monolithic system using a simple backpropagation algorithm.
机译:本文提出了一种可靠地识别复杂的阿拉伯语音素在连续演讲中的方法。这提出了通过人工神经专家的混合物来完成。这些专家通常使用自回归反向验证算法(AR-TDNN)的原始版本的时间延迟神经网络。使用耳朵模型产生的特定提示的模块操作语音电话分段。感知线性预测(PLP)系数,能量,过速率及其衍生物用作输入参数。 AR-TDNN的串行和并行架构已经实现并面对使用简单的BackProjagation算法的单片系统。

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