基于多位面多连接Hopfield神经网络的灰度图像识别

K. N. Mutter, Imad I. Abdul Kaream, Hussein A. Moussa
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引用次数: 8

摘要

本文提出了一种将Hopfield神经网络(HNN)应用于灰度图像的方法。Hopfield网络是由一层完全连接的处理元素组成的迭代自联想网络,因此被归类为联想记忆。联想记忆为基于内容而非存储地址存储和检索数据的计算机工程问题提供了一种方法。HNN处理直接输入数据的双极系统(即-1和+1),然而它对二值图像有用,但对灰度或彩色图像无用,除非我们假设这类图像的输入数据的另一种方式。为了克服这个障碍,可以假设由8层(位平面)二进制组成的8位灰度级图像可以表示为双极数据。这样就可以将HNN的每个位平面表示为单个二值图像。实验结果表明,HNN在灰度图像识别中的应用效果良好。此外,在网络内存中存储的8位灰度级图像的数量没有限制,可以获得相同的高效结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gray Image Recognition Using Hopfield Neural Network With Multi-Bitplane and Multi-Connect Architecture
In this work, a method for applying Hopfield neural network (HNN) with gray images is presented. Hopfield networks are iterative auto-associative networks consisting of a single layer of fully connected processing elements thus categorizes as an associative memory. Associative memories provide one approach to the computer-engineering problem of storing and retrieving data which is based on content rather than storage address. HNN deals with the bipolar system (i.e. -1 and +1) for direct input data, however it is useful for binary images, but unuseful for gray-level or color images unless we suppose another way for input data of such images. To overcome this obstacle, one can suppose for 8-bit gray-level image that consists of 8-layers (bitplanes) of binaries can be represented as bipolar data. In this way it is possible to express each bitplane as single binary image for HNN. The experimental results showed the usefulness of using HNN in gray-level images recognition with good results. Furthermore, there are no limitations to the number of 8-bit gray level images that can be stored in the net memory with the same efficient results
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