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Feature Representations for Neuromorphic Audio Spike Streams

机译:神经形态音频尖峰流的功能表示

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摘要

Event-driven neuromorphic spiking sensors such as the silicon retina and the silicon cochlea encode the external sensory stimuli as asynchronous streams of spikes across different channels or pixels. Combining state-of-art deep neural networks with the asynchronous outputs of these sensors has produced encouraging results on some datasets but remains challenging. While the lack of effective spiking networks to process the spike streams is one reason, the other reason is that the pre-processing methods required to convert the spike streams to frame-based features needed for the deep networks still require further investigation. This work investigates the effectiveness of synchronous and asynchronous frame-based features generated using spike count and constant event binning in combination with the use of a recurrent neural network for solving a classification task using N-TIDIGITS18 dataset. This spike-based dataset consists of recordings from the Dynamic Audio Sensor, a spiking silicon cochlea sensor, in response to the TIDIGITS audio dataset. We also propose a new pre-processing method which applies an exponential kernel on the output cochlea spikes so that the interspike timing information is better preserved. The results from the N-TIDIGITS18 dataset show that the exponential features perform better than the spike count features, with over 91% accuracy on the digit classification task. This accuracy corresponds to an improvement of at least 2.5% over the use of spike count features, establishing a new state of the art for this dataset.
机译:事件驱动的神经形态突波传感器(例如硅视网膜和耳蜗硅)将外部感觉刺激编码为跨不同通道或像素的尖峰异步流。将先进的深度神经网络与这些传感器的异步输出相结合,在某些数据集上产生了令人鼓舞的结果,但仍具有挑战性。虽然缺乏有效的尖峰网络来处理尖峰流是一个原因,但另一个原因是,将尖峰流转换为深度网络所需的基于帧的功能所需的预处理方法仍需要进一步研究。这项工作调查了使用尖峰计数和恒定事件合并结合使用递归神经网络来解决使用N-TIDIGITS18数据集进行分类任务而生成的基于同步和异步帧的功能的有效性。这个基于尖峰的数据集由动态音频传感器(一个尖刺的硅耳蜗传感器)响应TIDIGITS音频数据集而组成。我们还提出了一种新的预处理方法,该方法将指数内核应用于输出的耳蜗尖峰,以便更好地保留尖峰间的定时信息。 N-TIDIGITS18数据集的结果表明,指数特征比尖峰计数特征更好,数字分类任务的准确率超过91%。与使用峰值计数功能相比,此精度至少提高了2.5%,为该数据集建立了新的技术水平。

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