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Boosting Texture-Based Classification by Describing Statistical Information of Gray-Levels Differences

机译:通过描述灰度级别差异的统计信息,提高基于纹理的分类

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摘要

This paper presents a new texture descriptor booster, Complete Local Oriented Statistical Information Booster (CLOSIB), based on statistical information of the image. Our proposal uses the statistical information of the texture provided by the image gray-levels differences to increase the discriminative capability of Local Binary Patterns (LBP)-based and other texture descriptors. We demonstrated that Half-CLOSIB and M-CLOSIB versions are more efficient and precise than the general one. H-CLOSIB may eliminate redundant statistical information and the multi-scale version, M-CLOSIB, is more robust. We evaluated our method using four datasets: KTH TIPS (2-a) for material recognition, UIUC and USPTex for general texture recognition and JAFFE for face recognition. The results show that when we combine CLOSIB with well-known LBP-based descriptors, the hit rate increases in all the cases, introducing in this way the idea that CLOSIB can be used to enhance the description of texture in a significant number of situations. Additionally, a comparison with recent algorithms demonstrates that a combination of LBP methods with CLOSIB variants obtains comparable results to those of the state-of-the-art.
机译:本文介绍了一个新的纹理描述符助推器,完成了基于图像的统计信息的本地面向统计信息助推器(Closib)。我们的提案使用图像灰度级别差异提供的纹理的统计信息,以提高基于局部二进制模式(LBP)和其他纹理描述符的判别能力。我们展示了半场和M-Closib版本比一般更有效和精确。 H-Closib可以消除冗余统计信息和多尺度版本,M-CLOSIB,更强大。我们使用四个数据集进行了评估了我们的方法:Kth提示(2-A),用于材料识别,UIUC和USPTEX,用于一般纹理识别和jaffe的面部识别。结果表明,当我们将COSTIB与基于LBP的众所周知的描述符相结合时,所有情况下的命中率都会增加,以这种方式介绍了CLOSIB可用于增强纹理的描述在大量情况下。另外,与最近的算法的比较表明,LBP方法的组合具有与之变形的与现有技术的相当的结果获得了可比的结果。

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