基于熵的加权色相和灰度模糊c均值彩色图像分割

E. Rajaby, S. Ahadi, H. Aghaeinia
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引用次数: 1

摘要

图像分割是一种基于相似度对像素进行分组的任务。本文研究了彩色图像,特别是噪声图像的分割问题。为了提高分割速度和避免重复计算,我们的方法只使用两个颜色分量,即色调和强度,并合理选择。这两种颜色成分组合在一个特殊定义的成本函数中。每个颜色分量(色调和强度)的影响是由权重(称为色调权重和强度权重)控制的。这些权重导致更关注信息丰富的颜色成分,从而提高分割的速度和准确性。我们还在代价函数的核心使用了熵最大化来提高分割的性能。此外,我们还提出了一种基于二维直方图峰值发现的快速初始化方案,该方案可以防止模糊c均值收敛到局部最小值。我们的实验表明,该方法优于一些相关的最新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entropy-based fuzzy C-means with weighted hue and intensity for color image segmentation
Image segmentation is a task of grouping pixels based on similarity. In this paper the problem of segmentation of color images, especially noisy images, is studied. In order to improve the speed of segmentation and avoid redundant calculations, our method only uses two color components, hue and intensity, which are chosen rationally. These two color components are combined in a specially defined cost function. The impact of each color component (hue and intensity) is controlled by weights (called hue weight and intensity weight). These weights lead to focusing on the color component that is more informative and consequently the speed and accuracy of segmentation is improved. We have also used entropy maximization in the core of the cost function to improve the performance of segmentation. Furthermore we have suggested a fast initialization scheme based on peak finding of two dimensional histogram that prevents Fuzzy C-means from converging to a local minimum. Our experiments indicate that the proposed method performs superior to some related state-of-the-art methods.
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