Feedforward Computational Model for Pattern Recognition with Spiking neurons

Malu Zhang, Hong Qu, Jianping Li, A. Belatreche, Xiurui Xie, Zhi Zeng
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引用次数: 3

Abstract

Humans and primates are remarkably good at pattern recognition and outperform the best machine vision systems with respect to almost any measure. Building a computational model that emulates the architecture and information processing in biological neural systems has always been an attractive target. To build a computational model that closely follows the information processing and architecture of the visual cortex, in this paper, we have improved the latency-phase encoding to express the external stimuli in a more abstract manner. Moreover, inspired by recent findings in the biological neural system, including architecture, encoding, and learning theories, we have proposed a feedforward computational model of spiking neurons that emulates object recognition of the visual cortex for pattern recognition. Simulation results showed that the proposed computational model can perform pattern recognition task well. In addition, the success of this computational model suggests a plausible proof for feedforward architecture of pattern recognition in the visual cortex.
尖峰神经元模式识别的前馈计算模型
人类和灵长类动物非常擅长模式识别,几乎在任何方面都胜过最好的机器视觉系统。建立一个模拟生物神经系统结构和信息处理的计算模型一直是一个有吸引力的目标。为了建立一个与视觉皮层的信息处理和结构密切相关的计算模型,本文对潜伏期编码进行了改进,以更抽象的方式表达外部刺激。此外,受生物神经系统最新发现的启发,包括结构、编码和学习理论,我们提出了一种模拟视觉皮层物体识别的尖峰神经元的前馈计算模型,用于模式识别。仿真结果表明,该计算模型能较好地完成模式识别任务。此外,该计算模型的成功为视觉皮层模式识别的前馈结构提供了可信的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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