Analysis of Bidirectional Associative Memory of Neural Network Method in the String Recognition

A. Gupta, Y. Singh
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引用次数: 6

Abstract

This paper aims that analysing neural network method in pattern recognition. A neural network is a processing device, whose design was inspired by the design and functioning of human brain and their components. The proposed solutions focus on applying Bidirectional Associative Memory method model for pattern recognition. The primary function of which is to retrieve in a pattern stored in memory, when an incomplete or noisy version of that pattern is presented. An associative memory is a storehouse of associated patterns that are encoded in some form. In auto-association, an input pattern is associated with itself and the states of input and output units coincide. When the storehouse is incited with a given distorted or partial pattern, the associated pattern pair stored in its perfect form is recalled. Pattern recognition techniques are associated a symbolic identity with the image of the pattern. This problem of replication of patterns by machines (computers) involves the machine printed patterns. There is no idle memory containing data and programmed, but each neuron is programmed and continuously active.
神经网络方法在字符串识别中的双向联想记忆分析
本文旨在分析神经网络方法在模式识别中的应用。神经网络是一种处理装置,其设计灵感来自于人类大脑及其组成部分的设计和功能。提出的解决方案侧重于将双向联想记忆方法模型应用于模式识别。它的主要功能是检索存储在内存中的模式,当该模式的不完整或有噪声的版本出现时。联想记忆是以某种形式编码的关联模式的仓库。在自动关联中,输入模式与自身相关联,并且输入和输出单元的状态一致。当仓库被给定的扭曲的或部分的图案激发时,以其完美形式存储的相关图案对被召回。模式识别技术是将一个符号身份与模式图像相关联。这个由机器(计算机)复制图案的问题涉及到机器打印图案。没有包含数据和编程的空闲内存,但每个神经元都被编程并持续活跃。
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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