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Nonlinear Long-Term Prediction of Speech Signal

机译:语音信号的非线性长期预测

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This letter addresses a neural network (NN)-based predictor for the LP (Linear Prediction) residual. A new NN predictor takes into consideration not only prediction error but also quantization effects. To increase robustness against the quantization noise of the nonlinear prediction residual, a constrained back propagation learning algorithm, which satisfies a Kuhn-Tucker inequality condition is proposed. Preliminary results indicate that the prediction gain of the proposed NN predictor was not seriously decreased even when the constrained optimization algorithm was employed.
机译:这封信针对的是LP(线性预测)残差的基于神经网络(NN)的预测变量。新的NN预测器不仅要考虑预测误差,还要考虑量化效果。为了提高针对非线性预测残差的量化噪声的鲁棒性,提出了一种满足Kuhn-Tucker不等式条件的约束反向传播学习算法。初步结果表明,即使采用约束优化算法,提出的神经网络预测器的预测增益也不会严重降低。

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