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Robust Statistical Prior Knowledge for Active Contours: Prior Knowledge for Active Contours

机译:有效轮廓的强大统计事先知识:活动轮廓的先验知识

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We propose in this paper a new method of active contours with statistical shape prior. The presented approach is able to manage situations where the prior knowledge on shape is unknown in advance and we have to construct it from the available training data. Given a set of several shape clusters, we use a set of complete, stable and invariants shape descriptors to represent shape. A Linear Discriminant Analysis (LDA), based on Patrick-Fischer criterion, is then applied to form a distinct clusters in a low dimensional feature subspace. Feature distribution is estimated using an Estimation-Maximization (EM) algorithm. Having a currently detected front, a Bayesian classifier is used to assign it to the most probable shape cluster. Prior knowledge is then constructed based on it's statistical properties. The shape prior is then incorporated into a level set based active contours to have satisfactory segmentation results in presence of partial occlusion, low contrast and noise.
机译:我们在本文中提出了一种新的统计形状的活跃轮廓的新方法。呈现的方法能够管理现有知识提前未知的情况,并且我们必须从可用的培训数据构建它。给定一组若干形状群集,我们使用一组完整,稳定和不变的形状描述符来表示形状。然后,基于Patrick-Fischer标准的线性判别分析(LDA)被应用于在低维特征子空间中形成不同的簇。使用估计最大化(EM)算法估计特征分布。具有当前检测到的前端,贝叶斯分类器用于将其分配给最可能的形状集群。然后基于其统计特性构建先验知识。然后将其形状结合到基于级别的有源轮廓中,以具有令人满意的分割结果,导致部分闭塞,低对比度和噪声。

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