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Sound Recognition System Using Spiking and MLP Neural Networks

机译:使用Spiking和MLP神经网络的声音识别系统

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In this paper, we explore the capabilities of a sound classification system that combines a Neuromorphic Auditory System for feature extraction and an artificial neural network for classification. Two models of neural network have been used: Multilayer Perceptron Neural Network and Spiking Neural Network. To compare their accuracies, both networks have been developed and trained to recognize pure tones in presence of white noise. The spiking neural network has been implemented in a FPGA device. The neuromorphic auditory system that is used in this work produces a form of representation that is analogous to the spike outputs of the biological cochlea. Both systems are able to distinguish the different sounds even in the presence of white noise. The recognition system based in a spiking neural networks has better accuracy, above 91 %, even when the sound has white noise with the same power.
机译:在本文中,我们探索了声音分类系统的功能,该系统结合了用于特征提取的Neuromorphic听觉系统和用于分类的人工神经网络。已经使用了两种神经网络模型:多层感知器神经网络和尖峰神经网络。为了比较它们的精度,两个网络都经过开发和培训,可以在存在白噪声的情况下识别纯音。尖峰神经网络已在FPGA器件中实现。在这项工作中使用的神经形态听觉系统产生一种表示形式,类似于生物耳蜗的峰值输出。即使存在白噪声,这两个系统也能够区分不同的声音。即使在声音具有相同功率的白噪声的情况下,基于尖峰神经网络的识别系统也具有更高的准确度,超过91%。

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