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使用广义盒中脑状态神经网络的大规模模式存储与检索

Large-scale pattern storage and retrieval using generalized brain-state-in-a-box neural networks.

作者信息

Oh Cheolhwan, Zak Stanislaw H

机构信息

Department of Computer Science, Utah Valley University, Orem, UT 84058, USA.

出版信息

IEEE Trans Neural Netw. 2010 Apr;21(4):633-43. doi: 10.1109/TNN.2010.2040291. Epub 2010 Feb 17.

Abstract

In this paper, a generalized Brain-State-in-a-Box (gBSB)-based hybrid neural network is proposed for storing and retrieving pattern sequences. The hybrid network consists of autoassociative and heteroassociative parts. Then, a large-scale image storage and retrieval neural system is constructed using the gBSB-based hybrid neural network and the pattern decomposition concept. The notion of the deadbeat stability is employed to describe the stability property of the vertices of the hypercube to which the trajectories of the gBSB neural system are constrained. Extensive simulations of large scale pattern and image storing and retrieval are presented to illustrate the results obtained.

摘要

本文提出了一种基于广义盒中脑状态(gBSB)的混合神经网络,用于存储和检索模式序列。该混合网络由自联想和异联想部分组成。然后,利用基于gBSB的混合神经网络和模式分解概念构建了一个大规模图像存储和检索神经系统。采用无差拍稳定性的概念来描述gBSB神经系统轨迹所约束的超立方体顶点的稳定性特性。给出了大规模模式和图像存储与检索的大量仿真结果,以说明所获得的成果。

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