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Bio-inspired Multi-layer Spiking Neural Network Extracts Discriminative Features from Speech Signals

机译:受生物启发的多层尖刺神经网络从语音信号中提取歧视性特征

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Spiking neural networks (SNNs) enable power-efficient implementations due to their sparse, spike-based coding scheme. This paper develops a bio-inspired SNN that uses unsupervised learning to extract discriminative features from speech signals, which can subsequently be used in a classifier. The architecture consists of a spiking convolutional/pooling layer followed by a fully connected spiking layer for feature discovery. The convolutional layer of leaky, integrate-and-fire (LIF) neurons represents primary acoustic features. The fully connected layer is equipped with a probabilistic spike-timing-dependent plasticity learning rule. This layer represents the discriminative features through probabilistic, LIF neurons. To assess the discriminative power of the learned features, they are used in a hidden Markov model (HMM) for spoken digit recognition. The experimental results show performance above 96% that compares favorably with popular statistical feature extraction methods. Our results provide a novel demonstration of unsupervised feature acquisition in an SNN.
机译:尖峰神经网络(SNN)的稀疏,基于尖峰的编码方案可实现高能效的实现。本文开发了一种受生物启发的SNN,该技术使用无监督学习从语音信号中提取区分特征,随后可将其用于分类器中。该体系结构包括一个尖峰卷积/池化层,然后是一个用于特征发现的完全连接的尖峰层。泄漏,整合和发射(LIF)神经元的卷积层代表主要的声学特征。完全连接的层配备有概率峰值依赖于时机的可塑性学习规则。该层表示通过概率性LIF神经元的区分特征。为了评估学习特征的判别力,将它们用于语音数字识别的隐马尔可夫模型(HMM)中。实验结果表明,超过96%的性能优于流行的统计特征提取方法。我们的结果提供了SNN中无监督特征获取的新颖演示。

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