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基于类间最大交叉熵的坎尼边界扫描
引用本文:王卫星,王李平,赖均,李婷婷.基于类间最大交叉熵的坎尼边界扫描[J].电子科技大学学报(自然科学版),2010,39(3):402.
作者姓名:王卫星  王李平  赖均  李婷婷
作者单位:1.福州大学物理与信息工程学院 福州 350108;
摘    要:分析了传统坎尼边界扫描算法中阈值和高斯滤波器对边缘闭合的影响,首先采用当前像素点8个方向的自适应滤 波器代替原有的高斯滤波器对图像进行滤波,得到的梯度图像不会出现过度光滑现象;然后将最大类间交叉熵准则和有关人 工智能理论相结合来确定高、低阈值。自适应滤波器是根据当前像素点邻域内的最小方差确定使用的模板,将方差最小的模 板的均值设置为当前像素点的灰度值得到滤波后的图像。实验证明,该方法能得到较低的高阈值和较高的低阈值,既避免了 引入伪边缘又尽可能多的检测出边缘像素点;同时具有很强的抗噪性。

关 键 词:贝叶斯    类间方差    交叉熵    边界扫描
收稿时间:2008-10-21

Edge Detection Algorithm of Canny Based on Maximum Cross Entropy between-Classes
WANG Wei-xing,WANG Li-ping,LAI Jun,LI Ting-ting.Edge Detection Algorithm of Canny Based on Maximum Cross Entropy between-Classes[J].Journal of University of Electronic Science and Technology of China,2010,39(3):402.
Authors:WANG Wei-xing  WANG Li-ping  LAI Jun  LI Ting-ting
Affiliation:1.College of Physics and Information Engineering,Fuzhou University Fuzhou 350108;2.College of Computer Science and Technology,Chongqing University of Posts and Telecommunications Nan’an Chongqing 400065
Abstract:The analysis of the influence of the thresholds and Gauss filter on edge closure in contraditional Canny algorithm is presented. Firstly image was filtered of eight directions of the current pixel replaced the Gauss filter, there is no over-smoothing pixels in Gradient image; Secondly, combined maximized cross entropy criterion with the relative artificial intelligence theory to obtain the high and low thresholds. The adaptive filter was to setup models in the eight directions around the processing pixel, then defined template that will be used according to minimized variance in the neighborhood of the current pixel, the gray value was replaced by the mean value of the template which had minimized variance, then obtained smoothed image. Experiments proved that this algorithm may obtain higher low-threshold and lower high-thresholod, and not only avoided the introduction of pseudo-edge but also detected more edge pixels as soon as possible, and meantime it has strong anti-noise performance.
Keywords:
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