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Deep Spiking Neural Network model for time-variant signals classification: a real-time speech recognition approach

机译:用于时变信号分类的Deep Spiking神经网络模型:实时语音识别方法

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Speech recognition has become an important task to improve the human-machine interface. Taking into account the limitations of current automatic speech recognition systems, like non-real time cloud-based solutions or power demand, recent interest for neural networks and bio-inspired systems has motivated the implementation of new techniques. Among them, a combination of spiking neural networks and neuromorphic auditory sensors offer an alternative to carry out the human-like speech processing task. In this approach, a spiking convolutional neural network model was implemented, in which the weights of connections were calculated by training a convolutional neural network with specific activation functions, using firing rate-based static images with the spiking information obtained from a neuromorphic cochlea. The system was trained and tested with a large dataset that contains ”left” and ”right” speech commands, achieving 89.90% accuracy. A novel spiking neural network model has been proposed to adapt the network that has been trained with static images to a non-static processing approach, making it possible to classify audio signals and time series in real time.
机译:语音识别已成为改善人机界面的重要任务。考虑到当前的自动语音识别系统的局限性,例如非实时的基于云的解决方案或电源需求,最近对神经网络和生物启发系统的兴趣促使了新技术的实施。其中,尖峰神经网络和神经形态听觉传感器的组合为执行类似人的语音处理任务提供了一种选择。在这种方法中,实现了尖峰卷积神经网络模型,其中通过使用基于发射速率的静态图像以及从神经形态耳蜗获得的尖峰信息,通过训练具有特定激活函数的卷积神经网络来计算连接权重。该系统使用包含“左”和“右”语音命令的大型数据集进行了培训和测试,达到89.90%的准确性。已经提出了一种新颖的尖峰神经网络模型,以使已经用静态图像训练的网络适应非静态处理方法,从而可以对音频信号和时间序列进行实时分类。

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