首页> 外文会议>2016 International Conference on Signal and Information Processing >Analysis framework for machine learning experiments based on classifier combination for petrographic images
【24h】

Analysis framework for machine learning experiments based on classifier combination for petrographic images

机译:基于分类器组合的岩石图像机器学习实验分析框架

获取原文
获取原文并翻译 | 示例

摘要

The analysis and description of rocks is very well useful in geological industry and also in rock mining. Igneous rock is most abandoned rock in nature. The classification of Igneous rocks in its two types namely Plutonic and Volcanic is a complex and tedious job because of homogeneity between the classes. In geology this classification process has been carried out on the manual basis regularly, requiring high geological expertise. But being done manually can subject to error and leads to unnecessary delay. Hence for automating the process, pattern classification approach is used. In this paper a locally relevant database of igneous rocks involving both the rock types is considered for experimentation and testing. The grain size is considered as a discriminating textural feature for this classification problem followed by identification statistical features for textural discrimination such as Haralick features, and Laws Masks. A Radial basis function support vector machine classifier is used for the classification providing machine learning approach and giving reasonable results. But In Igneous rocks, the image classes are overlapping in the feature space. So the Classification accuracy can be further increased if the hypothesis of the multiple Support vector machine (SVM) image classifiers are combined to give a single hypothesis for the classification of an image. A method is presented for combining different base classifiers i.e. Adaboost technique.
机译:岩石的分析和描述在地质工业和岩石开采中非常有用。火成岩是自然界中最被遗弃的岩石。由于火成岩类之间的同质性,将火成岩分为Plutonic和Volcanic两种类型是一项复杂而乏味的工作。在地质学中,这种分类过程是定期手动进行的,需要很高的地质专业知识。但是手动完成可能会出错,并导致不必要的延迟。因此,为了使过程自动化,使用了模式分类方法。在本文中,考虑了涉及两种岩石类型的火成岩的本地相关数据库,以进行实验和测试。对于该分类问题,晶粒大小被认为是可区分的纹理特征,其次是用于纹理识别的识别统计特征,例如Haralick特征和Laws Masks。径向基函数支持向量机分类器用于分类,从而提供机器学习方法并给出合理的结果。但是在火成岩中,图像类在特征空间中重叠。因此,如果将多个支持向量机(SVM)图像分类器的假设进行组合以给出图像分类的单个假设,则可以进一步提高分类精度。提出了一种用于组合不同基础分类器的方法,即Adaboost技术。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号