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Accuracy of edge detection methods with local information in speckled imagery

机译:斑点图像中具有局部信息的边缘检测方法的准确性

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摘要

We compare the accuracy of five approaches for contour detection in speckled imagery. Some of these methods take advantage of the statistical properties of speckled data, and all of them employ active contours using B-spline curves. Images obtained with coherent illumination are affected by a noise called speckle, which is inherent to the imaging process. These data have been statistically modeled by a multiplicative model using the GO distribution, under which regions with different degrees of roughness can be characterized by the value of a parameter. We use this information to find boundaries between regions with different textures. We propose and compare five strategies for boundary detection: three based on the data (maximum discontinuity on raw data, fractal dimension and maximum likelihood) and two based on estimates of the roughness parameter (maximum discontinuity and anisotropic smoothed roughness estimates). In order to compare these strategies, a Monte Carlo experience was performed to assess the accuracy of fitting a curve to a region. The probability of finding the correct edge with less than a specified error is estimated and used to compare the techniques. The two best procedures are then compared in terms of their computational cost and, finally, we show that the maximum likelihood approach on the raw data using the GO law is the best technique.
机译:我们比较了斑点图像中轮廓检测的五种方法的准确性。这些方法中的某些方法利用了斑点数据的统计特性,并且所有方法均使用B样条曲线使用活动轮廓。相干照明获得的图像会受到称为斑点的噪声的影响,该噪声是成像过程固有的。这些数据已通过使用GO分布的乘法模型进行了统计建模,在该模型下,具有不同粗糙度的区域可以通过参数值来表征。我们使用此信息来查找具有不同纹理的区域之间的边界。我们提出并比较了五种边界检测策略:三种基于数据(原始数据的最大不连续性,分形维数和最大似然性)和两种基于粗糙度参数的估计值(最大不连续性和各向异性平滑粗糙度估计值)。为了比较这些策略,进行了蒙特卡洛经验以评估将曲线拟合到区域的准确性。估计找到小于指定误差的正确边缘的概率,并将其用于比较技术。然后根据计算成本比较这两个最佳过程,最后,我们证明了使用GO律对原始数据进行最大似然法是最好的技术。

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