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Efficient levels of spatial pyramid representation for local binary patterns

机译:局部二进制模式的有效空间金字塔表示水平

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摘要

Local binary patterns (LBPs) are a well-known operator that shows the ability for rotation and scale invariant texture classification. A recent extension of this operator is the pyramid transform domain approach on LBPs (PLBP). Obtaining more accuracy by using more pyramid representations is an important result of PLBP, which increases not only feature dimensionality, but also classification computational time (CT). This study illustrates that more pyramid image representations will not improve the performance of the PLBP. We evaluate efficient levels of representation for the PLBP descriptor. In addition, the authors propose some feature selection approaches, such as the multi-level and multi-resolution (ML + MR) approach and the ML, MR and multi-band (ML + MR + MB) approach and discuss their efficiency and CT. Experimental results show that the proposed feature selection approaches improve the accuracy of texture classification with fewer pyramid image representations. In addition, replacing the Chi-2 similarity measurement with Czekannowski improves the accuracy of texture classification.
机译:本地二进制模式(LBP)是一种众所周知的运算符,它显示了旋转和缩放不变纹理分类的能力。该运算符的最新扩展是LBP(PLBP)上的金字塔变换域方法。通过使用更多的金字塔表示获得更高的准确性是PLBP的重要结果,不仅增加了特征维,而且增加了分类计算时间(CT)。这项研究表明,更多的金字塔图像表示方法不会提高PLBP的性能。我们评估PLBP描述符的有效表示水平。此外,作者提出了一些特征选择方法,例如多级和多分辨率(ML + MR)方法以及ML,MR和多频带(ML + MR + MB)方法,并讨论了它们的效率和CT 。实验结果表明,所提出的特征选择方法以较少的金字塔图像表示提高了纹理分类的准确性。此外,用Czekannowski代替Chi-2相似性度量可以提高纹理分类的准确性。

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