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IMAGE COSEGMENTATION BASED ON LOCAL AND GLOBAL LEVEL SET METHODS

机译:基于局部和全局水平集方法的图像分割

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摘要

In this paper, we propose a novel co-segmentation algorithm based on active contour model which utilizes local and global image statistics. Many localized region-based active contour models have been proposed to solve a challenging problem of the property (such as intensity, color, texture, etc.) inhomogeneities that often occurs in real images, but these models usually cannot reasonably evolve the curve in this situation that some center points along the curve are in homogeneous regions and their local regions are far away from the object. In order to overcome the difficulties we selectively enlarge the driven force of some points and introduce the edge indicator function to avoid the curve over-shrinking or over-expanding on the salient boundaries. In addition, we introduce global image statistics to better the curve evolution and try to avoid the given energy functional converging to a local minimum. Practical experiments show that our algorithm can obtain better segmentation results.
机译:在本文中,我们提出了一种新的基于主动轮廓模型的联​​合分割算法,该算法利用了局部和全局图像统计信息。已经提出了许多基于局部区域的主动轮廓模型,以解决在真实图像中经常出现的具有挑战性的特性(例如强度,颜色,纹理等)不均匀性问题,但是这些模型通常无法合理地改变曲线。沿曲线的某些中心点位于同质区域且其局部区域远离对象的情况。为了克服这些困难,我们选择性地扩大了某些点的驱动力,并引入了边缘指示器功能,以避免曲线在显着边界上过度收缩或过度扩展。此外,我们引入了全局图像统计信息以改善曲线演化,并尝试避免给定的能量函数收敛到局部最小值。实际实验表明,我们的算法可以获得更好的分割效果。

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