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Nonlinear Shape Prior from Kernel Space for Geometric Active Contours

机译:几何活动轮廓线的核空间非线性先验

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The Geometric Active Contour (GAC) framework, which utilizes image information, has proven to be quite valuable for performing segmentation. However, the use of image information alone often leads to poor segmentation results in the presence of noise, clutter or occlusion. The introduction of shapes priors in the contour evolution proved to be an effective way to circumvent this issue. Recently, an algorithm was proposed, in which linear PCA (principal component analysis) was performed on training sets of data and the shape statistics thus obtained were used in the segmentation process. This approach was shown to convincingly capture small variations in the shape of an object. However, linear PCA assumes that the distribution underlying the variation in shapes is Gaussian. This assumption can be over-simplifying when shapes undergo complex variations. In the present work, we derive the steps for using Kernel PCA to in the GAC framework to introduce prior shape knowledge. Several experiments were performed using different training-sets of shapes. Starting with any initial contour, we show that the contour evolves to adopt a shape that is faithful to the elements of the training set. The proposed shape prior method leads to better performances than the one involving linear PCA.
机译:利用图像信息的几何主动轮廓(GAC)框架已被证明对于执行分割非常有价值。但是,仅使用图像信息通常会导致出现噪点,杂波或遮挡的不良分割结果。在轮廓演变中引入形状先验被证明是规避此问题的有效方法。最近,提出了一种算法,其中对训练的数据集执行线性PCA(主成分分析),并将由此获得的形状统计信息用于分割过程。事实证明,这种方法令人信服地捕获了物体形状的微小变化。但是,线性PCA假设形状变化的基础是高斯分布。当形状经历复杂变化时,此假设可能会过分简化。在当前的工作中,我们推导了在GAC框架中使用内核PCA引入先前形状知识的步骤。使用不同的形状训练集进行了几次实验。从任何初始轮廓开始,我们表明轮廓逐渐演变为采用忠实于训练集元素的形状。所提出的形状先验方法比涉及线性PCA的方法具有更好的性能。

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