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多层自适应模式识别系统模型
引用本文:杨国庆,陈松灿,吕军.多层自适应模式识别系统模型[J].航空学报,1993,14(2):26-32.
作者姓名:杨国庆  陈松灿  吕军
作者单位:南京航空学院计算机系,南京航空学院计算机系,南京航空学院计算机系 南京 210016,南京 210016,南京 210016
摘    要: 在英国WISARD单层模式识别系统的基础上,借助P.Kanerva的稀疏分布存贮(SDM)的概念,提出了~种新的多层自适应模式识别系统模型(MAPR)。并就其工作过程和主要特点作了较详细的叙述,还列出了多体印刷体汉字识别的初步试验结果。MAPR用稀疏RAN阵列代替WISARD的常规RAM阵列,用对n元模式计频的训练策略代替了原系统的直接置位策略。使系统除了保持原系统的重要优点外,在大维数或非确定性模式数据识别方面,其性能有了明显改善。

关 键 词:模式识别  稀疏分布存贮  并行分布处理  神经元网络  

A MULTI-LAYER ADAPTIVE PATLERN RECOGNITION SYSTEM MODEL
Yang Guo-qing,Chen Song-can,Lu Jun.A MULTI-LAYER ADAPTIVE PATLERN RECOGNITION SYSTEM MODEL[J].Acta Aeronautica et Astronautica Sinica,1993,14(2):26-32.
Authors:Yang Guo-qing  Chen Song-can  Lu Jun
Institution:Depatment of Computer Nanjing Aeronautical Jnsfitute,Nanjing,210016
Abstract:Based-on a single-layer pattern recognition system (WISARD) and referred to the concept of a sparse distributed memory (SDM) by P.Kanerva, this paper presents a novel multi-layer adaptive pattern recognition system model and describes in detail its processing procedures and main features. The results of primitive multi-font printed Chinese character recognition experiment are given.Unlike WISARD, MAPR replaces the normal RAM array with sparse RAM array, and the directly setting bit strategy with counting frequency training for n-tuple pattern, so that not only MAPR maintains the main advantages of WISARD, but its performance is obviously improved as well in the aspect of recognizing large-dimensional or non-deterministic pattern data.
Keywords:pattern recognition system  sparse distrobuted memory
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