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Statistical Edge Detection in CT Image by Kernel Density Estimation and Mean Square Error Distance

机译:基于核密度估计和均方误差距离的CT图像统计边缘检测

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In this paper, we develop a novel two-sample test statistic for edge detection in CT image. This test statistic involves the non-parametric estimate of the samples' probability density functions (PDF's) based on the kernel density estimator and the calculation of the mean square error (MSE) distance of the estimated PDF's. In order to extract single-pixel-wide edges, a generic detection scheme cooperated with the non-maximum suppression is also proposed. This new method is applied to a variety of noisy images, and the performance is quantitatively evaluated with edge strength images. The experiments show that the proposed method provides a more effective and robust way of detecting edges in CT image compared with other existing methods.
机译:在本文中,我们开发了一种新颖的两样本测试统计量用于CT图像的边缘检测。该测试统计信息涉及基于核密度估计器的样本概率密度函数(PDF)的非参数估计,以及估计PDF的均方误差(MSE)距离的计算。为了提取单像素宽的边缘,还提出了一种与非最大抑制相结合的通用检测方案。这种新方法适用于各种噪声图像,并使用边缘强度图像定量评估性能。实验表明,与其他现有方法相比,该方法提供了一种更有效,更鲁棒的CT图像边缘检测方法。

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