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基于LBP和极限学习机的脑部MR图像分类
  • ISSN号:1672-3961
  • 期刊名称:《山东大学学报:工学版》
  • 时间:0
  • 分类:TP393[自动化与计算机技术—计算机应用技术;自动化与计算机技术—计算机科学与技术]
  • 作者机构:桂林电子科技大学电子工程与自动化学院,广西桂林541004
  • 相关基金:国家自然科学基金资助项目(61105004);广西高校图像图形智能处理重点实验室基金资助项目(LD16096X);桂林电子科技大学创新基金资助项目(GDYCSZ201428)
中文摘要:

为解决磁共振(magnetic resonance,MR)脑部图像来源不一以及病变位置和形态不固定造成MR脑部图像分类精度不高的问题,提出基于局部二值模式(local binary pattern,LBP)的纹理特征提取,并用极限学习机(extreme learning machine,ELM)对M R图像分类。计算图像感兴趣区域(region of interest,ROI)的掩码,将图像分成扇形的子区域,统计掩码坐标下各块子区域的LBP直方图,连接所有LBP直方图作为特征向量通过ELM进行分类。相比以前的方法,该方法能够计算颅脑内局部纹理特征,能分类来源不一以及多种病变的图像。对脑部M R图像分类进行试验,对所有样本分类正确率超过92%,正类样本正确率超过93%,负类样本正确率超过91%。试验结果表明,该方法能够对较为复杂的MR图像进行正确分类。

英文摘要:

To solve the problem that theMR brain images are collect from different sources and the pathological fields are varied, a method combining the texture feature extractor which was based on the local binary patterns (LBP) with the extreme learning machine(ELM) classifier was proposed. Mask for region of interest( ROD was calculated, the im- age was divided into some sector subareas, LBP histograms were calculatedin every subarea, all the LBP histograms were connected as feature vector and then classified through ELM. Compared with previous methods, the new method could calculate local features, and it was feasible to classify the different sources of MR images and variously lesion im- ages. Some experiments for MR image classification were done, and the accuracy was more than 92% for all samples, the accuracy was more than 93% for positive sample, the accuracy was more than 91% for negative sample. The results showed that the method was available for the varied MR images.

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期刊信息
  • 《山东大学学报:工学版》
  • 北大核心期刊(2011版)
  • 主管单位:教育部
  • 主办单位:山东大学
  • 主编:李术才
  • 地址:山东济南市经十路17923号
  • 邮编:250061
  • 邮箱:xbgxb@sdu.edu.cn
  • 电话:0531-88396452
  • 国际标准刊号:ISSN:1672-3961
  • 国内统一刊号:ISSN:37-1391/T
  • 邮发代号:24-221
  • 获奖情况:
  • 国内外数据库收录:
  • 美国化学文摘(网络版),波兰哥白尼索引,美国剑桥科学文摘,中国中国科技核心期刊,中国北大核心期刊(2008版),中国北大核心期刊(2011版),中国北大核心期刊(2014版)
  • 被引量:6258