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A novel approach for color image segmentation based on region growing

机译:基于区域增长的彩色图像分割新方法

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In this paper, a novel approach for obtaining all possible uniform regions in the color image is proposed. The proposed approach integrates a color edge detection method; image partitioning; the initial seeds and thresholding region growing; the average overlap metric (AOM) and voting algorithms. It starts by decomposing the color image into less complicated component images. The edges of the color image are detected to extract the non-edge pixels during the region growing processes. Then, a source image is partitioned into cells while seeds are obtained by applying the local search algorithm in the image histogram. The growing processes are improved by color image thresholding algorithm which is necessary for finding the homogeneity criterion to merge similar pixels. The seeds and the homogeneity criterion values are the input to the region growing method to segment an image into regions; some of them are overlapped or been redundant. The AOM algorithm is applied to classify the redundant regions based on pixel similarity. These regions are fed to voting technique in order to produce region of points whose have similar values to utilize the compactness of the clusters forming these uniform regions. Experimental results are conducted using different color images with different sizes. Moreover, the proposed method is experimented by different noisy images and is compared with the well-known existing methods to prove its efficiency. The obtained results reveal the accuracy and stability of proposed technique and its superiority over other three well-known existing methods.
机译:在本文中,提出了一种新颖的方法来获得彩色图像中所有可能的均匀区域。所提出的方法集成了色彩边缘检测方法。图像分割初始种子和阈值区域正在增长;平均重叠指标(AOM)和投票算法。首先将彩色图像分解为较不复杂的组件图像。在区域生长过程中,检测彩色图像的边缘以提取非边缘像素。然后,将源图像划分为多个单元,同时通过在图像直方图中应用局部搜索算法获得种子。彩色图像阈值算法改善了生长过程,该算法对于寻找均匀性标准以合并相似像素是必需的。种子和同质性标准值是区域增长方法的输入,用于将图像分割成多个区域。其中一些重叠或多余。应用AOM算法基于像素相似度对冗余区域进行分类。将这些区域馈入投票技术,以产生具有相似值的点区域,以利用形成这些均匀区域的群集的紧凑性。使用具有不同尺寸的不同彩色图像进行实验结果。此外,该方法在不同的噪声图像上进行了实验,并与已知的现有方法进行了比较,以证明其有效性。所得结果揭示了所提出技术的准确性和稳定性以及其相对于其他三种已知现有方法的优越性。

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