使用活动轮廓进行直方图分割的形状梯度

S. Jehan-Besson, M. Barlaud, G. Aubert, O. Faugeras
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引用次数: 64

摘要

我们通过最小化涉及区域和边界函数的能量准则来考虑使用活动轮廓的图像分割问题。这些泛函是通过形状导数方法而不是经典的变分法推导出来的。不需要将区域积分转换为边界积分,就可以优雅地推导出方程。由导数推导出活动轮廓的演化方程,使活动轮廓向准则的最小值演化。我们特别关注区域的全局统计特征,特别是图像特征的概率密度函数,如区域的颜色直方图。为了匹配或跟踪的目的,设置了最小化两个直方图之间距离的理论框架。然后提出了该框架在视频序列中颜色直方图分割中的应用。我们简要地描述了我们的数值方案,并给出了一些实验结果。
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Shape gradients for histogram segmentation using active contours
We consider the problem of image segmentation using active contours through the minimization of an energy criterion involving both region and boundary functionals. These functionals are derived through a shape derivative approach instead of classical calculus of variation. The equations can be elegantly derived without converting the region integrals into boundary integrals. From the derivative, we deduce the evolution equation of an active contour that makes it evolve towards a minimum of the criterion. We focus more particularly on statistical features globally attached to the region and especially to the probability density functions of image features such as the color histogram of a region. A theoretical framework is set for the minimization of the distance between two histograms for matching or tracking purposes. An application of this framework to the segmentation of color histograms in video sequences is then proposed. We briefly describe our numerical scheme and show some experimental results.
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