多分辨率图像分割的无监督活动区域

X. Muñoz, J. Martí, X. Cufí, J. Freixenet
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引用次数: 13

摘要

提出了一种融合区域和边界信息的无监督图像分割方法。该方法综合利用了种子放置指导、决策准则控制和边界细化三种策略。该算法利用边界信息初始化一组竞争像素的活动区域,以分割整个图像。该方法采用多分辨率表示,保证了噪声的鲁棒性和计算效率。通过对该方法的客观对比评价,证明了分割结果的准确性。
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Unsupervised active regions for multiresolution image segmentation
An unsupervised approach to image segmentation which fuses region and boundary information is presented. The proposed approach takes advantage of the combined use of 3 different strategies: the guidance of seed placement, the control of decision criterion, and the boundary refinement. The new algorithm uses the boundary information to initialize a set of active regions which compete for the pixels in order to segment the whole image. The method is implemented on a multiresolution representation which ensures noise robustness as well as computation efficiency. The accuracy of the segmentation results has been proven through an objective comparative evaluation of the method.
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