Shape-Based Approach to Robust Image Segmentation using Kernel PCA.

Samuel Dambreville, Yogesh Rathi, Allen Tannenbaum
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引用次数: 0

Abstract

Segmentation involves separating an object from the background. In this work, we propose a novel segmentation method combining image information with prior shape knowledge, within the level-set framework. Following the work of Leventon et al., we revisit the use of principal component analysis (PCA) to introduce prior knowledge about shapes in a more robust manner. To this end, we utilize Kernel PCA and show that this method of learning shapes outperforms linear PCA, by allowing only shapes that are close enough to the training data. In the proposed segmentation algorithm, shape knowledge and image information are encoded into two energy functionals entirely described in terms of shapes. This consistent description allows to fully take advantage of the Kernel PCA methodology and leads to promising segmentation results. In particular, our shape-driven segmentation technique allows for the simultaneous encoding of multiple types of shapes, and offers a convincing level of robustness with respect to noise, clutter, partial occlusions, or smearing.

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基于形状的核PCA鲁棒图像分割方法。
分割涉及到将物体从背景中分离出来。在这项工作中,我们提出了一种在水平集框架内将图像信息与先验形状知识相结合的新型分割方法。在Leventon等人的工作之后,我们重新审视了主成分分析(PCA)的使用,以更稳健的方式引入关于形状的先验知识。为此,我们利用核主成分分析,并表明这种学习形状的方法优于线性主成分分析,因为它只允许与训练数据足够接近的形状。在该分割算法中,形状知识和图像信息被编码成两个完全用形状描述的能量函数。这种一致的描述允许充分利用核主成分分析方法,并导致有希望的分割结果。特别是,我们的形状驱动分割技术允许同时编码多种类型的形状,并在噪声、杂波、部分遮挡或涂抹方面提供令人信服的鲁棒性。
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