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Improvement of co-occurrence matrix calculation and collagen fibers orientation estimation

机译:共现矩阵计算和胶原纤维取向估计的改进

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Gray-level co-occurrence matrix (GLCM) is a statistical method widely used to characterize images and specifically, for Second Harmonic Generation (SHG) collagen images characterization. This method takes into account the spatial relationship between the image pixels, at specific angle. It is usually calculated for four orientations, at specific distances. Over these matrix, a textural feature function is calculated. Often, results of different orientations are compared or averaged to get a unique statistic parameter. In the present report, we will demonstrate the error that bring with this methodology, and following, we offer the correction formula. Preferred orientation of SHG images is proposed as structural property to characterize biological samples. For example, for determining the parallelism grade of collagen fibers regarding the ovarian epithelium. Here, we present a robust method to calculate this parameter, based on the two-dimensional Fourier transform. Finally, we show how these two elements help improve the discrimination between normal and pathological ovarian tissues.
机译:灰度共生矩阵(GLCM)是一种广泛用于表征图像的统计方法,尤其是用于第二谐波生成(SHG)胶原蛋白图像表征的统计方法。该方法考虑了特定角度下图像像素之间的空间关系。通常针对特定距离的四个方向进行计算。在这些矩阵上,计算纹理特征函数。通常,将不同方向的结果进行比较或取平均值,以获得唯一的统计参数。在本报告中,我们将演示此方法带来的误差,然后,我们提供校正公式。提出SHG图像的优选取向作为表征生物学样品的结构性质。例如,用于确定关于卵巢上皮的胶原纤维的平行度。在这里,我们提出了一种基于二维傅立叶变换来计算该参数的鲁棒方法。最后,我们展示了这两个要素如何帮助改善正常和病理性卵巢组织之间的区别。

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