Fast image segmentation based on adaptive histogram thresholding

A. Mirkazemi, S. E. Alavi, G. Akbarizadeh
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引用次数: 4

Abstract

In this paper, a new method for color image segmentation is presented. This method is based on histogram thresholding and correlation between the difference of color components. Hence, nearly all histogram thresholding methods work only in one or two dimensions of gray scale histogram, neighborhood, probability function or entropy. The proposed method will try to use color components as the main features of segmentation by finding the correlation between the peaks of histogram in each color component. It will help us to find main color components of each object and the background of image. While, we have main color components; it will be easy to use parallel processing to segment entire image at once without using any neighborhood window or losing any data in color space transform into gray scale. With these benefits, a fast and accurate method based on adaptive histogram thresholding is presented in this paper for segmentation of color images. The experimental results on benchmark datasets demonstrate the efficiency of the proposed method.
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基于自适应直方图阈值的快速图像分割
本文提出了一种新的彩色图像分割方法。该方法是基于直方图阈值分割和颜色分量之间的相关性。因此,几乎所有的直方图阈值方法都只能在灰度直方图、邻域、概率函数或熵的一个或两个维度上起作用。该方法通过寻找各颜色分量中直方图峰值之间的相关性,尝试将颜色分量作为分割的主要特征。它将帮助我们找到每个物体和图像背景的主要颜色成分。同时,我们有主要的颜色成分;在不使用邻域窗口或不丢失色彩空间数据的情况下,利用并行处理可以方便地一次分割整幅图像。基于这些优点,本文提出了一种基于自适应直方图阈值分割的快速、准确的彩色图像分割方法。在基准数据集上的实验结果证明了该方法的有效性。
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