Maximum likelihood thresholding algorithm based on four-parameter gamma distributions

Peter De-Ford, G. Martinez
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引用次数: 1

Abstract

In this contribution, we present a segmentation algorithm based on thresholding to subdivide an intensity image in the regions of object and background. The optimal threshold is found by maximizing a likelihood function derived from a novel intensity probability density function model, which consists of the sum of two weighted four-parameter gamma distributions, as a more flexible alternative to currently used models consisting of the sum of two weighted two-parameter Gaussian distributions. According to our experiments with 132 images, the proposed algorithm is in average slightly better than the best found in the scientific literature, performing particularly good in low contrast images. The additional parameters and complexity of its likelihood function resulted in an increase of the processing time by a factor of 3, from 0.003 sec/image to 0.009 sec/image.
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基于四参数伽马分布的最大似然阈值算法
在这篇贡献中,我们提出了一种基于阈值分割的分割算法来细分目标和背景区域的强度图像。最优阈值是通过最大似然函数找到的,该似然函数来自一个新的强度概率密度函数模型,该模型由两个加权四参数伽马分布的和组成,作为一个更灵活的替代目前使用的由两个加权两参数高斯分布的和组成的模型。根据我们对132张图像的实验,我们提出的算法平均比科学文献中发现的最佳算法略好,在低对比度图像中表现特别好。其似然函数的额外参数和复杂性导致处理时间增加了3倍,从0.003秒/图像增加到0.009秒/图像。
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