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基于增强尖峰的高效学习:图像分类案例研究。

Efficient learning with augmented spikes: A case study with image classification.

机构信息

Tianjin Key Laboratory of Cognitive Computing and Application, College of Intelligence and Computing, Tianjin University, Tianjin, 300350, China.

Tianjin Key Laboratory of Cognitive Computing and Application, College of Intelligence and Computing, Tianjin University, Tianjin, 300350, China.

出版信息

Neural Netw. 2021 Oct;142:205-212. doi: 10.1016/j.neunet.2021.05.002. Epub 2021 May 12.

DOI:10.1016/j.neunet.2021.05.002
PMID:34023641
Abstract

Efficient learning of spikes plays a valuable role in training spiking neural networks (SNNs) to have desired responses to input stimuli. However, current learning rules are limited to a binary form of spikes. The seemingly ubiquitous phenomenon of burst in nervous systems suggests a new way to carry more information with spike bursts in addition to times. Based on this, we introduce an advanced form, the augmented spikes, where spike coefficients are used to carry additional information. How could neurons learn and benefit from augmented spikes remains unclear. In this paper, we propose two new efficient learning rules to process spatiotemporal patterns composed of augmented spikes. Moreover, we examine the learning abilities of our methods with a synthetic recognition task of augmented spike patterns and two practical ones for image classification. Experimental results demonstrate that our rules are capable of extracting information carried by both the timing and coefficient of spikes. Our proposed approaches achieve remarkable performance and good robustness under various noise conditions, as compared to benchmarks. The improved performance indicates the merits of augmented spikes and our learning rules, which could be beneficial and generalized to a broad range of spike-based platforms.

摘要

spikes 的高效学习在训练尖峰神经网络 (SNNs) 以对输入刺激产生期望响应方面发挥了宝贵的作用。然而,当前的学习规则仅限于尖峰的二进制形式。神经系统中似乎无处不在的爆发现象表明,除了时间之外,通过尖峰爆发可以携带更多的信息。基于此,我们引入了一种高级形式,即扩充尖峰,其中尖峰系数用于携带附加信息。神经元如何学习和受益于扩充尖峰仍然不清楚。在本文中,我们提出了两种新的有效学习规则,用于处理由扩充尖峰组成的时空模式。此外,我们使用扩充尖峰模式的合成识别任务以及两个用于图像分类的实际任务来检查我们方法的学习能力。实验结果表明,与基准相比,我们的规则能够提取由尖峰的时间和系数携带的信息。与基准相比,我们的方法在各种噪声条件下都能实现显著的性能和良好的鲁棒性。改进的性能表明了扩充尖峰和我们的学习规则的优点,这对基于尖峰的广泛平台是有益和通用的。

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