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Unsupervised image segmentation by automatic gradient thresholding for dynamic region growth in the CIE L~*a~*b~* color space

机译:通过自动梯度阈值对动态区域生长的自动梯度阈值,CIE L〜* a〜* b〜*颜色空间的无监督图像分割

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In this paper, we propose a novel unsupervised color image segmentation algorithm named GSEG. This Gradient-based SEGmentation method is initialized by a vector gradient calculation in the CIE L~*a~*b~* color space. The obtained gradient map is utilized for initially clustering low gradient content, as well as automatically generating thresholds for a computationally efficient dynamic region growth procedure, to segment regions of subsequent higher gradient densities in the image. The resultant segmentation is combined with an entropy-based texture model in a statistical merging procedure to obtain the final result. Qualitative and quantitative evaluation of our results on several hundred images, utilizing a recently proposed evaluation metric called the Normalized Probabilistic Rand index shows that the GSEG algorithm is robust to various image scenarios and performs favorably against published segmentation techniques.
机译:在本文中,我们提出了一种名为GSEG的无监督彩色图像分割算法。该基于梯度的分割方法是通过CIE L〜* A〜* B〜*颜色空间中的向量梯度计算初始化。获得的梯度图用于最初聚类低梯度内容,以及自动生成用于计算有效的动态区域生长过程的阈值,以对图像中的后续更高梯度密度的段区域。结果分割与统计合并过程中的基于熵的纹理模型组合以获得最终结果。对我们的结果的定性和定量评估在几百个图像上,利用称为归一化概率兰特指数的最近提出的评估度量表明,GSEG算法对各种图像场景具有鲁棒,并且对公开的分段技术有利地执行。

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