新认知机视觉识别中基于时间编码的多维赫布学习

Multidimensional Hebbian Learning With Temporal Coding in Neocognitron Visual Recognition

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2016
被引 3
ABS 3

中文导读

研究了新认知机模型在灰度图像识别中的应用,通过引入时间编码扩展赫布学习理论,并首次定量分析了神经元对灰度图像分类的响应。

Abstract

Previous work on Fuskushima's neocognitron neural network model has mostly focused on binary character recognition, but grayscale images are preferable to binary images in real applications. Image classes of grayscale objects can be formed with an unsupervised learning process using the neocognitron neural network model. Since Hebbian learning as one that uses a time dependent and strongly interactive mechanism to increase synaptic efficiency as a correlation function between presynaptic and postsynaptic activity, and principal component analysis (PCA) is used in neuroscience extensively. An analogy is shown between unsupervised Hebbian learning and PCA when applied to the neocognitron model. The Hebbian learning theory is extended taking into consideration of temporal coding. Successful computer simulation models for grayscale object recognition are discussed. This paper is the first to carry out quantitative analysis of the neuron responses for gray scale image classification.

神经网络无监督学习图像识别计算机视觉