基于蚁群优化算法的图像边缘检测
    点此下载全文
引用本文:李琳琳,王纪奎,宋艳芳,王淑娇.基于蚁群优化算法的图像边缘检测[J].计算技术与自动化,2015,(3):96-99
摘要点击次数: 1510
全文下载次数: 66
作者单位
李琳琳,王纪奎,宋艳芳,王淑娇 (1.山东协和学院机电工程学院山东 济南250107
2.积成电子股份有限公司,山东 济南250104) 
中文摘要:图像边缘携带了图像的大部分主要信息。通过对图像进行边缘检测不仅能有效地提取图像信息降低计算的复杂度而且是图像测量、图像分割、图像压缩、模式识别等图像处理的基础。本文尝试将蚁群优化算法(Ant Colony Optimization, ACO)用于图像边缘检测,通过选取经典house图像和SAR机场图像设置阈值进行自适应边缘提取,实现了边缘的精确检测。实验结果显示,该算法能够有效地提取图像目标的轮廓信息,很好保持图像纹理,具有理想的抗干扰性能,保证了检测结果的准确性。
中文关键词:边缘检测  蚁群算法;蚁群优化算法
 
Image Edge Detection Based on Ant Colony Optimization Algorithm
Abstract:Image edge carries most of the major information of the image. And image edge detection can effectively reduce the computation complexity and is also the basis of image processing such as image measurement, image segmentation, image compression, pattern recognition and so on. In this paper Ant Colony Optimization (ACO) was used in image edge detection. The house image and SAR airport image were adaptively extracted by setting threshold, and accurate edge detection can be realized. Experimental results indicate that this algorithm can effectively extract the image object contour information, keep images texture, show ideal anti-jamming competence, and guarantee the detection accuracy.
keywords:edge detection  ant colony algorithm  ant colony optimization
查看全文   查看/发表评论   下载pdf阅读器