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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Robust line fitting in a noisy image by the method of moments
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Robust line fitting in a noisy image by the method of moments

机译:用矩量法对噪声图像进行稳健的线拟合

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摘要

The standard least squared distance method of fitting a line to a set of data points is known to be unreliable when the random noise in the input is significant compared with the data correlated to the line itself. Here, we present a new statistical clustering method based on Legendre moment theory and maximum entropy principle for line fitting in a noisy image. We propose a new approach for estimating the underlying probability density function (p.d.f.) of the data set. The p.d.f. is expanded in terms of Legendre polynomials by means of the Legendre moments. The order of the expansion is selected according to the maximum entropy principle. Then, the points corresponding to the maxima of the p.d.f. will be the true points of the line to be extracted by a chaining algorithm. This approach is directly generalized to multidimensional data. The proposed algorithm was successfully applied to real and simulated noisy line images, with comparison to some well-known methods.
机译:当输入中的随机噪声与与线本身相关的数据相比较大时,将线拟合到一组数据点的标准最小平方距离方法是不可靠的。在这里,我们提出了一种基于勒让德矩理论和最大熵原理的新统计聚类方法,用于噪声图像中的线拟合。我们提出了一种新的方法来估计数据集的潜在概率密度函数(p.d.f.)。 p.d.f.通过勒让德矩来根据勒让德多项式展开。扩展的顺序是根据最大熵原理选择的。然后,对应于p.d.f最大值的点将是要通过链接算法提取的直线的真实点。这种方法直接推广到多维数据。与一些众所周知的方法相比,该算法已成功应用于真实和模拟的噪声线图像。

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