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Local Histogram Based Segmentation Using the Wasserstein Distance

机译:使用Wasserstein距离的基于局部直方图的分割

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We propose and analyze a nonparametric region-based active contour model for segmenting cluttered scenes. The proposed model is unsupervised and assumes pixel intensity is independently identically distributed. Our proposed energy functional consists of a geometric regularization term that penalizes the length of the partition boundaries and a region-based image term that uses histograms of pixel intensity to distinguish different regions. More specifically, the region data encourages segmentation so that local histograms within each region are approximately homogeneous. An advantage of using local histograms in the data term is that histogram differentiation is not required to solve the energy minimization problem. We use Wasserstein distance with exponent 1 to determine the dissimilarity between two histograms. The Wasserstein distance is a metric and is able to faithfully measure the distance between two histograms, compared to many pointwise distances. Moreover, it is insensitive to oscillations, and therefore our model is robust to noise. A fast global minimization method based on (Chan et al. in SIAM J. Appl. Math. 66(5):1632-1648, 2006; Bresson et al. in J. Math. Imaging Vis. 28(2):151-167, 2007) is employed to solve the proposed model. The advantages of using this method are two-fold. First, the computational time is less than that of the method by gradient descent of the associated Euler-Lagrange equation (Chan et al. in Proc. of SSVM, pp. 697-708, 2007). Second, it is able to find a global minimizer. Finally, we propose a variant of our model that is able to properly segment a cluttered scene with local illumination changes.
机译:我们提出并分析了一种基于非参数区域的主动轮廓模型,用于分割杂乱的场景。所提出的模型是无监督的,并假设像素强度独立地均匀分布。我们提出的能量函数由惩罚分区边界长度的几何正则项和使用像素强度直方图区分不同区域的基于区域的图像项组成。更具体地,区域数据鼓励分割,使得每个区域内的局部直方图近似均匀。在数据项中使用局部直方图的优点是不需要直方图微分来解决能量最小化问题。我们使用指数为1的Wasserstein距离来确定两个直方图之间的差异。 Wasserstein距离是一个度量,可以忠实地测量两个直方图之间的距离(与许多点式距离相比)。此外,它对振荡不敏感,因此我们的模型对噪声具有鲁棒性。一种快速全局最小化方法,基于(Chan等人在SIAM J.Appl.Math.66(5):1632-1648,2006; Bresson等人在J.Math.Imaging Vis.28(2):151- 167(2007)。使用此方法的优点有两个方面。首先,计算时间比相关的Euler-Lagrange方程通过梯度下降的方法要少(Chan等人,Proc。of SSVM,第697-708页,2007年)。其次,它能够找到全局最小化器。最后,我们提出了模型的一种变体,该变体能够通过局部光照变化正确地分割出混乱的场景。

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