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Local binary patterns based on α-cutting approach

机译:基于α切割方法的局部二进制模式

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Local binary patterns (LBP) are well documented in the literature as descriptors of local image texture, and their histograms have been shown to be well-performing texture features. A method for texture description that is based on the alpha-cutting approach is presented. The presented approach combines basic definitions from the fuzzy set theory with the main concept of LBP descriptors, which resulted in powerful texture features. The general method is introduced and defined and its binary, ternary, and quinary versions evaluated in tests produced excellent results in texture classification. The performance of our method is presented by an extensive evaluation on four datasets-KTH-TIPS2b, UIUC, Virus, and Brodatz. The introduced descriptors are compared with some of the classical approaches-LBP, improved LBP, local ternary pattern, including one very promising LBP variant-median robust extended LBP (MRELBP), as well as with three non-LBP methods, based on deep convolutional neural networks approaches-ScatNet, FV-AlexNet, and fisher vector based very deep VGG. Our method effectively deals with many classification challenges and exceeds most of the other approaches. It outperforms the classical approaches on all datasets, even in its simplest binary version. It outperforms the MRELBP descriptor on the UIUC, KTH-TIPS2b, and Brodatz datasets and reaches abetter classification performance than two out of the three deep learning approaches on the KTH-TIPS2b dataset. (C) 2020 SPIE and IS&T
机译:本地二进制模式(LBP)在文献中被良好记录为局部图像纹理的描述符,并且它们的直方图已被证明是良好的纹理特征。提出了一种基于α切割方法的纹理描述的方法。呈现的方法将模糊集理论与LBP描述符的主要概念相结合的基本定义,这导致了强大的纹理功能。介绍和定义了一般方法及其在测试中评估的二进制,三元和Quary版本产生了纹理分类的优异结果。我们的方法的性能是在四个数据集-Kth-tips2b,Uiuc,病毒和Brodatz上进行广泛的评估。将引入的描述符与一些经典方法进行比较,改进的LBP,局部三元模式,包括一个非常有前途的LBP变体中位强度扩展的LBP(MRELBP),以及基于深卷积的三种非LBP方法神经网络方法 - 基于Scatnet,FV-AlexNet和Fisher向量非常深的VGG。我们的方法有效地涉及许多分类挑战,超过了大多数其他方法。即使在其最简单的二进制版本中,它才能优于所有数据集上的古典方法。它优于UIUC,Kth-Tips2B和Brodatz数据集上的MRELBP描述符,并在第三次深度学习方法中的两个深度学习方法中达到教育分类性能。 (c)2020个SPIE和IS&T

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