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处理带有变形凸性物体灰度图像的CNN新模板
引用本文:闵乐泉,菅志刚,王静涛.处理带有变形凸性物体灰度图像的CNN新模板[J].广西师范大学学报(自然科学版),2002,20(1):56-60.
作者姓名:闵乐泉  菅志刚  王静涛
作者单位:北京科技大学,数学力学系,北京,100083
基金项目:国家自然科学基金,The Foundation for University Key Teacher by the China Ministry of Education 
摘    要:细胞神经网络(CNN)是图像处理的有力工具。它已用于人工视觉,录像压缩,图像融合、运动和图形识别等领域。本文提出了一组CNN新模板,用于恢复数字化灰度图像中扭曲凸物体像的凸性,通过计算机模拟,利用凸性恢复CNN处理了一幅带有高斯噪声的数字化理想圆灰度图像。处理后图像中的理想圆比用识别算子处理的图像具有更好的凸性,可以预期CNN新模板能够用来分析晶体的电子衍射图和银河系中恒星的图像。

关 键 词:细胞神经网络  模板  图像处理  恢复凸性  灰度图像  变形凸性物体  图形识别

NEW TEMPLATES CNN FOR PROCESSING GRAY-SCALE IMAGE WITH DISTURBED CONVEX OBJECTS
Abstract.NEW TEMPLATES CNN FOR PROCESSING GRAY-SCALE IMAGE WITH DISTURBED CONVEX OBJECTS[J].Journal of Guangxi Normal University(Natural Science Edition),2002,20(1):56-60.
Authors:Abstract
Abstract:The cellular neural network (CNN) is a powerful tool fo r image processing and has been used for artificial vision,video compression,ima ge fusion,motion and pattern recognition.This paper presents a set of new CNN te mplates for recovering convexity of disturbed convex objects in digitized gray scale images.The computer simulation showed that comparing to the recognizing op erator,the CNN can recover more effectively degraded convex circles by Gaussian noise.It is expected that the new CNN templates can be used for analyzing electr onic diffraction patterns (EDPs) of crystal and star images in the Galaxy.
Keywords:cellular neural network  templates  image processing  rec overing convexity
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