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Efficient Texture Regularity Estimation for Second Order Statistical Descriptors

机译:用于二阶统计描述符的高效纹理规则估计

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Co-occurrence matrices as sources of second order statistical descriptors are commonly used in texture classification tasks. To generate such a matrix, we need a position vector to check possible intensity frequencies in its endpoints. In this paper, we propose an efficient algorithm to locate such position vectors according which the pattern of the texture repeats and thus, the descriptors (Haralick features) derived from the co-occurrence matrix are capable to characterize the regularity of the pattern. The essence of our approach is to look for vectors that span well-approximating grids defined by reference points obtained by quantizing the input image. To extract such grids we use the LLL algorithm, which has a polynomial running time. Thus, we have a much more efficient solution than e.g. a brute force based search. Our results show that the proposed approach is capable to suggest position vectors for an efficient co-occurrence matrix based texture analysis.
机译:作为二阶统计描述符的来源共出矩阵通常用于纹理分类任务。为了生成这样的矩阵,我们需要一个位置向量来检查其端点中可能的强度频率。在本文中,我们提出了一种有效的算法来定位根据其纹理重复模式的这种位置矢量,因此,从共发生矩阵导出的描述符(haralick特征)能够表征模式的规律性。我们方法的本质是寻找跨越通过通过量化输入图像获得的参考点定义的近似网格的载体。要提取此类网格,我们使用具有多项式运行时间的LLL算法。因此,我们的解决方案比例如更有效。基于蛮力的搜索。我们的研究结果表明,该方法能够建议基于有效的共生殖矩阵的纹理分析的位置向量。

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