基于时间动态学习的脉冲域特征提取

Honghao Zheng, Y. Yi
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摘要

脉冲神经网络(SNN)由于其基于事件的特性而受到越来越多的研究关注。snn具有这种特性,比传统的人工神经网络更节能。为了将信息传输到峰值,snn需要一个编码过程。SNN采用时间编码方案,从原始信息中提取时间模式。一种更高级的编码方案是多路时间编码,它结合了几种不同时间尺度的编码方案,具有更大的信息密度和动态范围。之后,由于SNN无法通过反向传播等常规训练算法进行训练,因此采用尖峰时序依赖可塑性(STDP)学习算法对SNN进行训练。本文在EAGLE上设计了一种具有时序复用编码的尖峰域特征提取神经网络,并在PCB板上制作。试验台的功耗为400mW。从测试结果可以得出结论,PCB上的网络可以将输入信息传输到多路时间编码尖峰,然后利用尖峰来调节突触权重电压。
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Spiking Domain Feature Extraction with Temporal Dynamic Learning
Spiking neural network (SNN) has attracted more and more research attention due to its event-based property. SNNs are more power efficient with such property than a conventional artificial neural network. For transferring the information to spikes, SNNs need an encoding process. With the temporal encoding schemes, SNN can extract the temporal patterns from the original information. A more advanced encoding scheme is a multiplexing temporal encoding which combines several encoding schemes with different timescales to have a larger information density and dynamic range. After that, the spike timing dependence plasticity (STDP) learning algorithm is utilized for training the SNN since the SNN can not be trained with regular training algorithms like backpropagation. In this work, a spiking domain feature extraction neural network with temporal multiplexing encoding is designed on EAGLE and fabricated on the PCB board. The testbench’s power consumption is 400mW. From the test result, a conclusion can be drawn that the network on PCB can transfer the input information to multiplexing temporal encoded spikes and then utilize the spikes to adjust the synaptic weight voltage.
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