Appia Vikram, Ganapathy Balaji, Yezzi Anthony, Faber Tracy
Georgia Institute of Technology, Atlanta, GA, USA.
Emory University, Atlanta, GA, USA.
IEEE Int Conf Comput Adv Bio Med Sci. 2011 Nov 6;2011:1981-1986. doi: 10.1109/ICCV.2011.6126469.
We propose a novel localized principal component analysis (PCA) based curve evolution approach which evolves the segmenting curve semi-locally within various target regions (divisions) in an image and then combines these locally accurate segmentation curves to obtain a global segmentation. The training data for our approach consists of training shapes and associated auxiliary (target) masks. The masks indicate the various regions of the shape exhibiting highly correlated variations locally which may be rather independent of the variations in the distant parts of the global shape. Thus, in a sense, we are clustering the variations exhibited in the training data set. We then use a parametric model to implicitly represent each localized segmentation curve as a combination of the local shape priors obtained by representing the training shapes and the masks as a collection of signed distance functions. We also propose a parametric model to combine the locally evolved segmentation curves into a single hybrid (global) segmentation. Finally, we combine the evolution of these semilocal and global parameters to minimize an objective energy function. The resulting algorithm thus provides a globally accurate solution, which retains the local variations in shape. We present some results to illustrate how our approach performs better than the traditional approach with fully global PCA.
我们提出了一种基于局部主成分分析(PCA)的新型曲线演化方法,该方法在图像中的各个目标区域(分区)内进行半局部的分割曲线演化,然后将这些局部精确的分割曲线组合起来以获得全局分割。我们方法的训练数据包括训练形状和相关的辅助(目标)掩码。这些掩码指示了形状的各个区域,这些区域在局部表现出高度相关的变化,而这些变化可能与全局形状远处部分的变化相当独立。因此,从某种意义上说,我们正在对训练数据集中呈现的变化进行聚类。然后,我们使用参数模型将每个局部分割曲线隐式表示为通过将训练形状和掩码表示为有符号距离函数的集合而获得的局部形状先验的组合。我们还提出了一个参数模型,将局部演化的分割曲线组合成一个单一的混合(全局)分割。最后,我们结合这些半局部和全局参数的演化来最小化目标能量函数。由此产生的算法因此提供了一个全局精确的解决方案,该方案保留了形状的局部变化。我们展示了一些结果来说明我们的方法比具有完全全局PCA的传统方法表现得更好。