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Affine-Gradient Based Local Binary Pattern Descriptor for Texture Classification

机译:基于仿射梯度的局部二值模式描述符用于纹理分类

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We present a novel Affine-Gradient based Local Binary Pattern (AGLBP) descriptor for texture classification. It is very hard to describe complicated texture using single type information, such as Local Binary Pattern (LBP), which just utilizes the sign information of the difference between pixel and its local neighbors. Our descriptor has three characteristics: (1) In order to make full use of the information contained in the texture, the Affine-Gradient, which is different from Euclidean-Gradient and invariant to affine transformation, is incorporated into AGLBP. (2) An improved method is proposed for rotation invariance, which depends on the reference direction calculating respect to local neighbors. (3) Feature selection method, considering both the statistical frequency and the intraclass variance of the training dataset, is also applied to reduce the dimensionality of descriptors. Experiments on three standard texture datasets, Outex12, Outex10 and KTH-TIPS2, are conducted to evaluate the performance of AGLBP. The results show that our proposed descriptor gets better performance comparing to some state-of-the-art rotation texture descriptors in texture classification.
机译:我们提出了一种新颖的基于仿射梯度的局部二进制模式(AGLBP)描述符,用于纹理分类。很难使用单一类型的信息来描述复杂的纹理,例如仅利用像素与其本地邻居之间的差异的符号信息的本地二进制模式(LBP)。我们的描述符具有三个特征:(1)为了充分利用纹理中包含的信息,将Affine-Gradient与Euclidean-Gradient不同并且将仿射变换定为不变,将其合并到AGLBP中。 (2)提出了一种改进的旋转不变性方法,该方法取决于参考方向相对于本地邻居的计算。 (3)特征选择方法同时考虑了统计数据的频率和训练数据集的类内方差,也被用于降低描述子的维数。对三个标准纹理数据集(Outex12,Outex10和KTH-TIPS2)进行了实验,以评估AGLBP的性能。结果表明,与纹理分类中一些最新的旋转纹理描述符相比,我们提出的描述符具有更好的性能。

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