Texture Representation Using Galois Field for Rotation Invariant Classification

S. Shivashankar, Medha Kudari, P. Hiremath
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引用次数: 6

Abstract

A novel method for rotation invariant texture representation using Galois Field is proposed in this paper. Rotation invariance is accomplished due to the commutative and associative properties of Galois Field addition. The bin values of the normalized cumulative histogram for Galois Field operated image are considered as texture features which are inherently rotation invariant. These features are used for texture classification; K-Nearest Neighbour classifier is used for classification. The Brodatz, Mondial Marmi, Outex and Vectorial datasets are considered for experimentation of the proposed method. The experimental results are compared with Rotation Invariant Local Binary Pattern (RI LBP) and Log-Polar transform method. It is observed that the proposed texture representation is more effective as compared to other two methods.
利用伽罗瓦场进行纹理表示,实现旋转不变分类
本文提出了一种利用伽罗瓦场进行旋转不变纹理表示的新方法。由于伽罗瓦场加法的交换和关联特性,旋转不变性得以实现。伽罗瓦场操作图像的归一化累积直方图的二进制值被视为纹理特征,这些特征本身具有旋转不变性。这些特征用于纹理分类;K-近邻分类器用于分类。在实验中使用了 Brodatz、Mondial Marmi、Outex 和 Vectorial 数据集来验证所提出的方法。实验结果与旋转不变局部二进制模式(RI LBP)和对数极性变换方法进行了比较。结果表明,与其他两种方法相比,所提出的纹理表示方法更为有效。
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