完全并行联想记忆与人类记忆型学习模式

M. Abedin, A. Ahmadi, T. Koide, H. Mattausch
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引用次数: 0

摘要

提出了一种带学习模型的全并行联想记忆体系结构。它使用一种混合的数字模拟联想记忆来识别参考模式,并采用一种类似于人类大脑的基于短期和长期记忆的学习模型。此外,采用排序机制来管理参考向量在两个存储器之间的转换,并采用优化算法来连续调整参考向量的组成及其分布。该模型的主要优点是不需要预训练阶段,并且它的硬件友好结构使得它可以在不需要大量资源的情况下通过高效的LSI架构实现。在FPGA平台上实现了该系统,并对手写和打印的英文字符进行了实际数据测试,结果令人满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully parallel associative memory with human memory type learning model
In this paper, fully parallel associative memory architecture with learning model is proposed. It uses a mixed digital-analog associative memory for reference pattern recognition and a learning model based on a short and long-term memory similar to that in human brain. In addition a ranking mechanism is used to manage the transition of reference vectors between two memories and an optimization algorithm is used to adjust the reference vectors components as well as their distribution continuously. The main advantage of the proposed model is no need to pre-training phase as well as its hardware-friendly structure which makes it implementable by an efficient LSI architecture without requiring a large amount of resources. The system was implemented on an FPGA platform and tested with real data of handwritten and printed English characters and the classification results found satisfactory.
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