...
首页> 外文期刊>Engineering Applications of Artificial Intelligence >Attractive-and-repulsive center-symmetric local binary patterns for texture classification
【24h】

Attractive-and-repulsive center-symmetric local binary patterns for texture classification

机译:具有吸引力和排斥力的中心对称局部二进制模式用于纹理分类

获取原文
获取原文并翻译 | 示例
           

摘要

Aiming at the defect of Local Binary Pattern (LBP) and its variants, this paper presents a new modeling o the conventional LBP operator for texture classification. Named Attractive-and-Repulsive Center-Symmetric Local Binary Patterns (ACS-LBP and RCS-LBP), the proposed new texture descriptors preserve the advantageou characteristics of uniform LBP. Based on local attractive-and-repulsive characteristics, the proposed local texturi modeling can really inherit good properties from both gradient and texture operators than the Center-Symmetric Local Binary Patterns (CS-LBP) does. Different from CS-LBP, which considers four doublets around the cente pixel, the proposed methods take into account the four triplets corresponding to the vertical and horizonta directions, and the two diagonal directions by including the value of the central pixel in the modeling. addition, Average Local Gray Level (ALGL), Average Global Gray Level (AGGL) and the median value ove 3 x 3 neighborhood are introduced to capture both microstructure and macrostructure texture information. T( capture the coarse and fine information of the features and thus to make ACS-LBP and RCS-LBP more robust ant stable, multiscale ARCS-LBP descriptor is proposed. There is no necessity to learn texton dictionary, as in method based on clustering, and no tuning of parameters is required to deal with different datasets. Extensive experiment performed on thirteen challenging representative texture databases show that the proposed operators can achievi impressive classification accuracy. Furthermore, we clearly validate the feasibility of the proposed ACS-LBP RCS-LBP and ARCS-LBP descriptors by comparing their results with those obtained with a large number o recent state-of-the-art texture descriptors including deep features. Statistical significance of achieved accurac' improvement is demonstrated through Wilcoxon signed rank test.
机译:针对局部二值图案(LBP)及其变体的缺陷,本文提出了一种传统的LBP算子用于纹理分类的新模型。命名为吸引与排斥中心对称局部二进制模式(ACS-LBP和RCS-LBP)的拟议的新纹理描述符保留了均匀LBP的优点。基于局部吸引和排斥特性,与中心对称局部二进制模式(CS-LBP)相比,拟议的局部纹理建模可以真正从渐变和纹理运算符继承良好的属性。与CS-LBP不同,CS-LBP在中心像素周围考虑了四个双峰,所提出的方法通过在建模中包括中心像素的值,将对应于垂直和水平方向的四个三元组和两个对角线方向考虑在内。此外,引入了平均局部灰度(ALGL),平均全局灰度(AGGL)和中间值3 x 3邻域,以捕获微观结构和宏观结构纹理信息。 T(捕获特征的粗略和精细信息,从而使ACS-LBP和RCS-LBP具有更强的蚂蚁稳定性,提出了多尺度的ARCS-LBP描述符。无需像基于聚类的方法那样学习文本字典。 ,并且不需要调整参数就可以处理不同的数据集;在13个具有挑战性的代表性纹理数据库上进行的广泛实验表明,所提出的算子可以达到令人印象深刻的分类精度;此外,我们清楚地验证了所提出的ACS-LBP RCS-LBP的可行性和ARCS-LBP描述子的结果与大量包含深层特征的最新纹理描述子的结果进行比较,通过Wilcoxon符号秩检验证明了所获得的Accurac改进的统计意义。

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