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Nonlinear enhancement of noisy speech, using continuous attractor dynamics formed in recurrent neural networks

机译:使用递归神经网络中形成的连续吸引子动力学来非线性增强嘈杂语音

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Here, formation of continuous attractor dynamics in a nonlinear recurrent neural network is used to achieve a nonlinear speech denoising method, in order to implement robust phoneme recognition and information retrieval. Formation of attractor dynamics in recurrent neural network is first carried out by training the clean speech subspace as the continuous attractor. Then, it is used to recognize noisy speech with both stationary and nonstationary noise. In this work, the efficiency of a nonlinear feedforward network is compared to the same one with a recurrent connection in its hidden layer. The structure and training of this recurrent connection, is designed in such a way that the network learns to denoise the signal step by step, using properties of attractors it has formed, along with phone recognition. Using these connections, the recognition accuracy is improved 21% for the stationary signal and 14% for the nonstationary one with Odb SNR, in respect to a reference model which is a feedforward neural network.
机译:在此,通过在非线性递归神经网络中形成连续的吸引子动力学来实现非线性语音去噪方法,以实现鲁棒的音素识别和信息检索。循环神经网络中吸引子动力学的形成首先是通过训练干净的语音子空间作为连续吸引子来进行的。然后,它用于识别具有固定和非固定噪声的嘈杂语音。在这项工作中,将非线性前馈网络的效率与在隐层中具有递归连接的同一个网络进行比较。这种循环连接的结构和训练的设计方式是,网络会利用已形成的吸引子的特性,逐步学习对信号进行降噪,并进行电话识别。通过使用这些连接,相对于参考模型(前馈神经网络),对于具有Odb SNR的固定信号,识别精度提高了21%,对于非平稳信号的识别精度提高了14%。

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