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首页> 外文期刊>Image Processing, IEEE Transactions on >Variational Region-Based Segmentation Using Multiple Texture Statistics
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Variational Region-Based Segmentation Using Multiple Texture Statistics

机译:使用多个纹理统计量的基于变分区域的分割

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This paper investigates variational region-level criterion for supervised and unsupervised texture-based image segmentation. The focus is given to the demonstration of the effectiveness and robustness of this region-based formulation compared to most common variational approaches. The main contributions of this global criterion are twofold. First, the proposed methods circumvent a major problem related to classical texture based segmentation approaches. Existing methods, even if they use different and various texture features, are mainly stated as the optimization of a criterion evaluating punctual pixel likelihoods or similarity measure computed within a local neighborhood. These approaches require sufficient dissimilarity between the considered texture features. An additional limitation is the choice of the neighborhood size and shape. These two parameters and especially the neighborhood size significantly influence the classification performances: the neighborhood must be large enough to capture texture structures and small enough to guarantee segmentation accuracy. These parameters are often set experimentally. These limitations are mitigated with the proposed variational methods stated at the region-level. It resorts to an energy criterion defined on image where regions are characterized by nonparametric distributions of their responses to a set of filters. In the supervised case, the segmentation algorithm consists in the minimization of a similarity measure between region-level statistics and texture prototypes and a boundary based functional that imposes smoothness and regularity on region boundaries. In the unsupervised case, the data-driven term involves the maximization of the dissimilarity between regions. The proposed similarity measure is generic and permits optimally fusing various types of texture features. It is defined as a weighted sum of Kullback–Leibler divergences between feature distributions. The optimization of the proposed variation-n-nal criteria is carried out using a level-set formulation. The effectiveness and the robustness of this formulation at region-level, compared to classical active contour methods, are evaluated for various Brodatz and natural images.
机译:本文研究了基于监督和无监督的基于纹理的图像分割的变分区域级准则。与大多数常见的变型方法相比,重点是演示了这种基于区域的配方的有效性和鲁棒性。该全局标准的主要贡献是双重的。首先,提出的方法规避了与基于经典纹理的分割方法有关的主要问题。现有方法,即使它们使用不同和各种纹理特征,也主要表示为评估准点像素似然性或在局部邻域内计算的相似性度量的标准的优化。这些方法要求所考虑的纹理特征之间有足够的相似性。另一个限制是邻域大小和形状的选择。这两个参数,尤其是邻域大小会显着影响分类性能:邻域必须足够大以捕获纹理结构,而邻域必须足够小以确保分割精度。这些参数通常是通过实验设置的。这些局限性可以通过在地区层面上提出的拟议变分方法来缓解。它诉诸于在图像上定义的能量标准,其中区域的特征是其对一组滤波器的响应的非参数分布。在有监督的情况下,分割算法包括最小化区域级统计量和纹理原型之间的相似性度量以及基于边界的函数,该函数在区域边界上施加平滑度和规则性。在无人监督的情况下,数据驱动的术语涉及区域之间差异的最大化。所提出的相似性度量是通用的,可以最佳地融合各种类型的纹理特征。它定义为特征分布之间的Kullback-Leibler差异的加权和。使用水平集公式对建议的n项最终标准进行优化。与经典主动轮廓法相比,该制剂在区域水平上的有效性和鲁棒性针对各种Brodatz和自然图像进行了评估。

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