本文已被:浏览 1228次 下载 2301次
Received:January 09, 2014 Revised:March 10, 2014
Received:January 09, 2014 Revised:March 10, 2014
中文摘要: 为正确提取作物病害图像病斑,提出了一种基于支持向量机与多特征选择的作物彩色病斑边缘检测方法.该方法用(2d+1)×(2d+1)大小的窗口遍历图像,计算图像亮度和色度通道的方差、均值差、最大梯度,以及空间位置特征和均值色差作为特征向量,实现支持向量机对病斑边缘识别. 为提高检测病斑边缘的效率,提出了在遍历过程中,若特征值都小于阈值时,则跳过d 行,d 列再遍历. 实验表明,该方法比传统的边缘检测算子具有更好的病斑边缘识别能力.
Abstract:In order to correctly extract the lesion of crop disease images, proposes a method to detect color edge of crop disease based on support vector machines and multi feature selection. The method uses (2d + 1) * (2d + 1) as the size of the window through the image. It also is used on the image luminance and chrominance channels calculate variance, mean value difference, maximum gradient, characteristics of space position and mean color difference. In order to accurately identify the edge of disease spot, the characteristics of vector-valued input support vector machine is employed. To improve the efficiency of disease spot of edge detection, a method is proposed in the traversal process, if the eigenvalues are smaller than the threshold, skip d row, d column to traverse. The experimental shows that the method has better than the traditional edge detection operator disease spot edge recognition ability.
文章编号: 中图分类号: 文献标志码:
基金项目:
Author Name | Affiliation |
PU Yong-Xian | Computer Science Department, Dehong Teachers' College, Dehong 678400, China |
Author Name | Affiliation |
PU Yong-Xian | Computer Science Department, Dehong Teachers' College, Dehong 678400, China |
引用文本:
濮永仙.基于支持向量机与多特征选择的农作物彩色病斑边缘检测.计算机系统应用,2014,23(9):118-123
PU Yong-Xian.Color Disease Spot Edge Detection of Crop Based on Multifeature Selection and Support Vector Machine.COMPUTER SYSTEMS APPLICATIONS,2014,23(9):118-123
濮永仙.基于支持向量机与多特征选择的农作物彩色病斑边缘检测.计算机系统应用,2014,23(9):118-123
PU Yong-Xian.Color Disease Spot Edge Detection of Crop Based on Multifeature Selection and Support Vector Machine.COMPUTER SYSTEMS APPLICATIONS,2014,23(9):118-123