FPGA实现神经网络的硬件结构及其在图像处理中的应用

B. Leiner, V.Q. Lorena, T.M. Cesar, M.V. Lorenzo
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引用次数: 13

摘要

这项工作描述了一个使用可重构硬件设备(如FPGA(现场可编程门阵列))的联想记忆神经网络(AMNN)的硬件架构实现及其在图像模式识别系统中的应用。关联内存是一种内容可寻址的结构,它将特定的输入表示映射到特定的输出表示。它是一个将两个模式(X, Y)“关联”起来的系统,这样当遇到一个模式时,就可以回忆起另一个模式。在设计中,利用VHSIC硬件描述语言实现了神经网络的学习和识别算法。采用FPGA进行实现,因为它可以大大缩短开发时间,易于快速重编程,价格低廉,架构灵活,并且可以快速且不昂贵地实现整个系统。该体系结构被评价为图像识别系统。同样,执行和获取阶段也是必要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hardware Architecture for FPGA Implementation of a Neural Network and Its Application in Images Processing
This work describes a hardware architecture implementation of an associative memory neural network (AMNN) using reconfigurable hardware devices such as FPGA (field programmable gates arrays) and its applications in image pattern recognition systems. An associative memory is a content-addressable structure that maps specific input representations to specific output representations. It is a system that "associates" two patterns (X, Y) such that when one is encountered, the other can be recalled. In the design, learning and recognizing algorithms for the neural network are implemented by using VHSIC Hardware Description Language. FPGA is used for implementation because they can reduce development time greatly, ease of fast reprogramming, low price, flexible architecture and permitting fast and non expensive implementation of the whole system. The architecture was evaluated as image recognizing system. Likewise, it was necessary to implement and acquisition stage.
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