基于模式识别的全息图神经元波斯语字母识别

Vahid Hajihashemi, Mohammad Mehdi Arab Ameri, A. Alavi Gharahbagh, A. Bastanfard
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引用次数: 8

摘要

在本文中,矢量符号体系结构旨在实现一个用于记忆波斯语/阿拉伯语孤立字符模式的分层图神经元。本主题的主要挑战是使用向量符号表示作为神经网络的单层设计,同时保持先前报道的分层图神经元的属性和性能特征。所设计的体系结构对噪声具有鲁棒性,并且能够对任意子模式进行线性(相对于存储条目的数量)时间搜索。在一个标准的波斯语数据库上实现了该方法,得到的结果表明图神经元对波斯语孤立字符模式的识别能力(不一定更好)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A pattern recognition based Holographic Graph Neuron for Persian alphabet recognition
In this article a Vector Symbolic Architectures is purposed to implement a hierarchical Graph Neuron for memorizing patterns of Persian/Arabic isolated characters. The main challenge in this topic is using Vector Symbolic representation as a one-layered design for neural network while maintaining the previously reported properties and performance characteristics of hierarchical Graph Neuron. The designed architecture is robust to noise and enables a linear (with respect to the number of stored entries) time search for an arbitrary sub-pattern. The proposed method was implemented on a standard Persian database and the obtained results showed the ability of (not necessarily better) Graph neuron to recognize the Persian isolated character patterns.
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