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Adjacent Evaluation of Completed Local Ternary Count for Texture Classification

机译:邻近完整的局部三元计数进行纹理分类的评估

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Local Binary Pattern (LBP) is one of the successful texture analysis methods. However, LBP suffers from noise robustness and rotation invariance. This paper proposes a novel noise insensitive texture descriptor, Adjacent Evaluation Local Ternary Count (AELTC) for rotation invariant texture classification. Unlike LBP, AELTC uses an adjacent evaluation window to change the threshold scheme. It is enhanced to Adjacent Evaluation Completed Local Ternary Count (AECLTC) with three operators to improve the performance of texture classification. During the performance evaluation, various experiments are conducted on Outex and CUReT databases using seven existing LBP variants and with proposed AECLTC. The results demonstrated the superiority of AECLTC when compared to other LBP variants.
机译:局部二进制模式(LBP)是成功的纹理分析方法之一。然而,LBP遭受噪声稳健性和旋转不变性。本文提出了一种新的噪声不敏感纹理描述符,相邻的评估局部三元计数(Aeltc),用于旋转不变纹理分类。与LBP不同,AELTC使用相邻的评估窗口来改变阈值方案。它增强了相邻的评估完成了本地三元数量(AECLTC),三个运营商提高了纹理分类的性能。在性能评估期间,使用七个现有的LBP变体和提出的AECLTC在外投和曲奇数据库上进行各种实验。结果表明,与其他LBP变体相比,AECLTC的优越性。

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