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Texture Classification Using Dense Micro-block Difference (DMD)

机译:使用密集微块差异(DMD)进行纹理分类

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The paper proposes a novel image representation for texture classification. The recent advancements in the field of patch based fear tures compressive sensing and feature encoding are combined to design a robust image descriptor. In our approach, we first propose the local features, Dense Micro-block Difference (DMD), which capture the local structure from the image patches at high scales. Instead of the pixel we process the small blocks from images which capture the micro-structure from it. DMD can be computed efficiently using integral images. The features are then encoded using Fisher Vector method to obtain an image descriptor which considers the higher order statistics. The proposed image representation is combined with linear SVM classifier. The experiments are conducted on the standard texture datasets (KTH-TIPS-2a, Brodatz and Curet). On KTH-TIPS-2a dataset the proposed method outperforms the best reported results by 5.5% and has a comparable performance to the state-of-the-art methods on the other datasets.
机译:本文提出了一种用于纹理分类的新颖图像表示方法。基于补丁的压缩感知和特征编码领域的最新进展相结合,设计出了一种健壮的图像描述符。在我们的方法中,我们首先提出局部特征Dense Micro-block Difference(DMD),该特征可以从图像块中大规模捕获局部结构。我们不是处理像素,而是处理图像中的小块,这些小块捕获了其中的微结构。使用积分图像可以有效地计算DMD。然后使用Fisher Vector方法对特征进行编码,以获得考虑了较高阶统计量的图像描述符。所提出的图像表示与线性SVM分类器相结合。实验是在标准纹理数据集(KTH-TIPS-2a,Brodatz和Curet)上进行的。在KTH-TIPS-2a数据集上,所提出的方法优于报告的最佳结果5.5%,并且具有与其他数据集上的最新方法相当的性能。

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