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基于k-mean聚类与灰度梯度最大熵的树木图像分割
引用本文:白雪冰,陈凯,郭景秋,祝贺,张庭亮.基于k-mean聚类与灰度梯度最大熵的树木图像分割[J].森林工程,2014(6):84-88.
作者姓名:白雪冰  陈凯  郭景秋  祝贺  张庭亮
作者单位:东北林业大学机电工程学院,哈尔滨150040
基金项目:黑龙江省自然基金项目(C201208)
摘    要:提出一种基于k-mean聚类与灰度-梯度最大熵的树木图像分割算法,将要处理的树木彩色图像在RGB颜色空间下进行基k-mean聚类,通过选取合适的类参数实现初分割.由于灰度-梯度空间清晰地描绘图像中各个像素点的灰度、梯度的分布规律及图像目标与背景之间的边缘情况,采用灰度-梯度最大熵算法进行精分割,结合形态学后处理提取图像边缘最终将获得更理想的独立目标图像.与二维最大熵分割方法比较的实验结果表明,灰度-梯度最大熵算法提高了树木图像分割的准确度.

关 键 词:k-mean聚类  灰度-梯度最大熵  形态学后处理

Tree Image Segmentation Based on K-mean Clustering and Gray-gradient Maximum Entropy
Bai Xuebing,Chen Kai,Guo Jingqiu,Zhu He,Zhang Tingliang.Tree Image Segmentation Based on K-mean Clustering and Gray-gradient Maximum Entropy[J].Forest Engineering,2014(6):84-88.
Authors:Bai Xuebing  Chen Kai  Guo Jingqiu  Zhu He  Zhang Tingliang
Institution:(College of Mechanical and Electrical Engineering, Northeast Forestry University, Harbin 150040)
Abstract:This paper proposed a k-mean clustering and gray-gradient maximum entropy image segmentation algorithm for trees. The color tree image was processed for base-k-mean clustering in the RGB color space, to achieve early segmentation parameters by se- lecting the appropriate class. Since gray-gradient space can clearly delineates between the distribution of edge cases each image pixel gray, gradient and image of the target and the background, the gray-gradient maximum entropy algorithm can be used to perform fine segmentation in combination with morphological processing of extracted image edge and the separated target image can eventually be ob- tained. Compared with the two-dimensional maximum entropy segmentation method, the results showed that gray-gradient maximmn entropy algorithm can improve the accuracy of image segmentation of trees.
Keywords:k-mean clustering  gray-gradient maximum entropy  morphology post-treatment
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