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VC++与Matlab混合编程的图像处理 被引量:2

Image Processing Based on Mixed Programming of VC++ and Matlab
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摘要 主要讨论了VC++与M atlab混合编程的两种常规方式,给出了利用M atlab数学函数库混合编程的实现方法,指出了常规方式存在不足的同时,提出了另外两种方法,实现了利用M atlab数学函数库和编译器结合VC++混合编程的新方法,充分发挥了VC++有效运算速率与M atlab强大矩阵运算的优点。实验结果说明本文所提方案可行,适用于图像处理。 Two kinds of routine mixed programming modes, VC ++ and Matlab, are discussed in this paper,and the corresponding realizing steps and the disadvantages are presented. Based on experiment results, two other new mixed programming methods which combine the Matlab library and compiler with VC + + are proposed. The advantages of the effective computer speed of VC ++ and the powerful matrix operation of Matlab are fully embodied in the proposed methods which work well in the experiments.
出处 《海洋测绘》 2006年第4期63-65,共3页 Hydrographic Surveying and Charting
基金 国家863计划资助项目(2005AA731071)
关键词 图像处理 VC++ 混合编程 数学函数库 编译器 image processing VC + + mixed programming math library compiler
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