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An effective scheme for image texture classification based on binary local structure pattern

机译:一种基于二值局部结构模式的图像纹理分类有效方案

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摘要

Effectiveness of local binary pattern (LBP) features is well proven in the field of texture image classification and retrieval. This paper presents a more effective completed modeling of the LBP. The traditional LBP has a shortcoming that sometimes it may represent different structural patterns with same LBP code. In addition, LBP also lacks global information and is sensitive to noise. In this paper, the binary patterns generated using threshold as a summation of center pixel value and average local differences are proposed. The proposed local structure patterns (LSP) can more accurately classify different textural structures as they utilize both local and global information. The LSP can be combined with a simple LBP and center pixel pattern to give a completed local structure pattern (CLSP) to achieve higher classification accuracy. In order to make CLSP insensitive to noise, a robust local structure pattern (RLSP) is also proposed. The proposed scheme is tested over three representative texture databases viz. Outex, Curet, and UIUC. The experimental results indicate that the proposed method can achieve higher classification accuracy while being more robust to noise.
机译:局部二值模式(LBP)功能的有效性已在纹理图像分类和检索领域得到了充分证明。本文提出了更有效的LBP建模。传统的LBP有一个缺点,有时它可以用相同的LBP代码表示不同的结构模式。此外,LBP还缺少全局信息,并且对噪声敏感。在本文中,提出了使用阈值作为中心像素值和平均局部差之和生成的二进制模式。提议的局部结构模式(LSP)可以利用本地和全局信息来更准确地对不同的纹理结构进行分类。可以将LSP与简单的LBP和中心像素图案结合使用,以提供完整的局部结构图案(CLSP),以实现更高的分类精度。为了使CLSP对噪声不敏感,还提出了一种鲁棒的本地结构模式(RLSP)。在三个代表性纹理数据库上测试了所提出的方案。 Outex,Curet和UIUC。实验结果表明,该方法可以实现较高的分类精度,同时对噪声具有较强的鲁棒性。

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