一种新的用于图像分类的小波完全局部三元计数方法

Taha H. Rassem, Fatimah A. Alkareem, Mohammed Falah Mohammed, Nasrin M. Makbol, A. Sallam
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引用次数: 1

摘要

为了克服噪声敏感性和提高局部二值模式的判别质量,将局部三值模式(LTP)与局部二值模式(CLBC) (LBP)相结合,提出了一种完全局部三值计数(CLTC)方法。此外,通过将所提出的CLTC与冗余离散小波变换(RDWT)相结合,构造小波完备局部三元计数,提高了所提出的CLTC的判别性(WCLTC)。因此,可以在RDWT域内更准确地捕获局部纹理特征。该方法用于纹理和医学图像的分类。使用CUReT和Outex两个基准纹理数据集以及三个医学图像数据库(2D Hela、VIRUS texture和BR数据集)对WCLTC性能进行了评估。在这些数据集中,实验结果显示了显著的分类准确性。在一些情况下,WCLTC的性能优于前面的描述。对于2D Hela、CUReT和Virus数据集,WCLTC的分类准确率最高,分别为96.91%、97.04%和72.89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Wavelet Completed Local Ternary Count (WCLTC) for Image Classification
To overcome noise sensitivity and increase the discriminative quality of the Local Binary Pattern, a Completed Local Ternary Count (CLTC) was developed by combining the Local Ternary Pattern (LTP) with the Completed Local Binary Count (CLBC) (LBP). Furthermore, by integrating the proposed CLTC with the Redundant Discrete Wavelet Transform (RDWT) to construct a Wavelet Completed Local Ternary Count, the proposed CLTC’s discriminative property is improved (WCLTC). As a result, more accurate local texture feature capture inside the RDWT domain is possible. The proposed WCLTC is utilised to perform texture and medical image classification tasks. The WCLTC performance is evaluated using two benchmark texture datasets, CUReT and Outex, as well as three medical picture databases, 2D Hela, VIRUS Texture, and BR datasets. With several of these datasets, the experimental findings demonstrate a remarkable classification accuracy. In several cases, the WCLTC performance outperformed the prior descriptions. With the 2D Hela, CUReT, and Virus datasets, the WCLTC achieves the highest classification accuracy of 96.91%, 97.04 percent, and 72.89%, respectively.
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