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Multiscale Symmetric Dense Micro-Block Difference for Texture Classification

机译:多尺度对称密集微块差异纹理分类

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摘要

A dense micro-block difference (DMD)-based method was proposed for performing texture representation that is a fundamental task of image and video analysis. However, it cannot capture effectively the rotation invariance and multiscale spatial information of textures. To alleviate these problems, in this paper, we propose a multiscale symmetric DMD (MSDMD) method for texture classification. In particular, we first combine K-rotation and Gaussian distribution to analyze the Symmetric DMD in order to capture the rotation invariance of textures. Furthermore, we propose a high-order vector of locally aggregated descriptor called HVLAD by incorporating the second-order and third-order statistics into the original vector of VLAD. To effectively extract the spatial information of textures, we implement the above-mentioned steps in a Gaussian pyramid structure to construct an MSDMD feature and use a support vector machine (SVM) to perform texture classification. The experimental results on five available published texture datasets (KTH-TIPS, CUReT, UIUC, UMD, and KTH-TIPS2-b) reveal that our proposed method is effective when compared with 15 representative texture classification methods.
机译:提出了一种用于执行纹理表示的致密微块差(DMD)方法,这是图像和视频分析的基本任务。然而,它无法有效地捕获纹理的旋转不变性和多尺度空间信息。为了减轻这些问题,在本文中,我们提出了一种多尺度对称DMD(MSDMD)方法,用于纹理分类。特别地,我们首先将K旋转和高斯分布组合以分析对称DMD以捕获纹理的旋转不变性。此外,我们通过将二阶和三阶统计信息结合到VLAD的原始向量中,提出了称为HVLAD的局部聚合描述符的高阶向量。为了有效地提取纹理的空间信息,我们在高斯金字塔结构中实现上述步骤以构建MSDMD特征并使用支持向量机(SVM)来执行纹理分类。五种可用的发布纹理数据集(kth-tips,卷曲,Uiuc,Umd和kth-tips2-b)的实验结果表明,与15个代表纹理分类方法相比,我们所提出的方法是有效的。

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