改进的完整鲁棒局部二值模式的高效纹理图像检索

A. Kurniawardhani, A. E. Minarno, Fitri Bimantoro
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引用次数: 7

摘要

改进的完全鲁棒局部二值模式是一种旋转不变性鲁棒纹理提取方法。在四种不同的纹理图像数据集上,ICRLBP的准确率、查全率和计算时间分别提高了21.14%、20.03%和56倍。然而,ICRLBP具有很多特征,因此在识别过程中需要花费更多的时间。此外,它还导致了高耗时和多维度的诅咒。为了克服这些问题,本文尝试减少不重要或不必要的ICRLBP属性,并研究减少属性数量对检索图像的精度和召回率的影响。我们使用了基于相关性的特征选择(CFS)和基于Pearson的相关性来减少ICRLBP属性。实验结果表明,这些特征选择不仅可以减少属性的数量,而且可以提高准确率、查全率和计算时间。对于S_M_C特征(ICRLBP的符号、幅度和中心特征共同绘制在直方图上),CFS可以减少高达95%的属性数量,提高精度、召回率和计算时间,分别提高7.5%、7.1%和11.42倍。对于M_C特征(ICRLBP的幅值和中心特征共同绘制在直方图上),CFS最多可以减少4.2%的属性数量,提高精度、召回率和计算时间,分别提高4.2%、4%和1.1倍。结果表明,基于相关性的特征选择(CFS)和基于Pearson的相关性可以有效地降低ICRLBP属性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient texture image retrieval of improved completed robust local binary pattern
Improved Completed Robust Local Binary Pattern is one of the robust texture extraction for image retrieval that rotation invariant (ICRLBP). ICRLBP has proven that can increase the precision, recall, and computation time from its previous work by 21.14%, 20.03%, and 56 times, respectively, on four different texture image dataset. ICRLBP, however, has a lot of feature, thus require more time during recognition process. Moreover, it leads to high time consuming and curse of dimensionality. To overcome those issues, in this paper, we try to reduce insignificant or unnecessary ICRLBP attributes and examine the effect of reducing number of attributes on precision and recall of the retrieving images. The methods we used to reduce the ICRLBP attributes are Correlation-based Feature Selection (CFS) and Pearson's-based Correlation. The experiment results show that those feature selections not only can reduce number of attributes but also can improve precision, recall, and computation time. For S_M_C feature (sign, magnitude, and center features of ICRLBP are ploted on histogram jointly), CFS can reduce up to 95% number of attributes and improve precision, recall, computation time up to 7.5%, 7.1%, 11.42 times, respectively. For M_C feature (magnitude and center features of ICRLBP are ploted on histogram jointly), CFS can reduce up to 4.2% number of attributes and improve precision, recall, computation time up to 4.2%, 4%, 1.1 times, respectively. It indicated that Correlation-based Feature Selection (CFS) and Pearson's-based Correlation can reduce the ICRLBP attributes effectively.
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