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Noise reduction using connectionist models

机译:使用连接仪模型降低降噪

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摘要

Using a back propagation network learning algorithm, a four-layered feed-forward network is trained on learning samples to realize a mapping from the set of noisy signals a set of noise-free signals. Computer experiments were carried out on 12 kHz sampled Japanese speech data, using stationary and nonstationary noise. The experiments showed that the network can indeed learn to perform noise reduction. Even for noisy speech signals that had not been part of the training data, the network successfully produced noise-suppressed output signals.
机译:使用反向传播网络学习算法,在学习样本上培训四层前馈网络,以实现从一组无噪声信号的噪声信号集的映射。计算机实验是在12 kHz采样日语语音数据上进行的,使用静止和非间抗噪声。实验表明,网络确实可以学会减少降噪。即使对于噪声的语音信号尚未成为训练数据的一部分,网络也成功地产生了噪声抑制的输出信号。

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