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Multi-Scale Cross-Band Encoding of Sectored Local Binary Pattern for Robust Texture Classification

机译:鲁棒纹理分类的扇形局部二值模式的多尺度跨带编码

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The original Local Binary Pattern (LBP) has limited discriminative power and is sensitive to noise. In view of this., this paper proposes a novel image descriptor called Multi-Scale Cross-Band Encoding of Sectored Local Binary Pattern (MCE-SLBP) for robust texture classification. First., the pyramid decomposition is explored to obtain multi-scale low-frequency and high-frequency (difference) images. To encode more discriminative features., these high-frequency images are further decomposed into positive and negative high-frequency images via the polarity splitting. Then., a robust Sectored Local Binary Pattern (SLBP) is proposed to compute texture feature codes on the decomposed images via cross-band joint coding. Finally., a multi-scale histogram representation is obtained by concatenating histograms of texture codes computed at all decomposition levels. Experiments on three benchmark texture databases (i.e.., Outex., Brodatz and CUReT) demonstrate that the proposed method achieves the state-of-the-art classification accuracies both under noise-free conditions and in the presence of different levels of Gaussian noise.
机译:原始的本地二进制模式(LBP)的判别能力有限,并且对噪声敏感。鉴于此,本文提出了一种新颖的图像描述符,称为多尺度跨频带局部扇形二进制编码(MCE-SLBP),用于鲁棒纹理分类。首先,探索金字塔分解以获得多尺度的低频和高频(差分)图像。为了编码更多的鉴别特征,这些高频图像通过极性分裂被进一步分解为正和负高频图像。然后,提出了一种鲁棒的扇形局部二值模式(SLBP),用于通过跨频带联合编码在分解后的图像上计算纹理特征码。最后,通过将在所有分解级别上计算出的纹理代码的直方图进行级联,可以获得多尺度直方图表示。在三个基准纹理数据库(即Outex。,Brodatz和CUReT)上进行的实验表明,该方法在无噪声条件下和存在不同高斯噪声的情况下均达到了最新的分类精度。

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