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Landmark-based segmentation of lungs while handling partial correspondences using sparse graph-based priors

机译:使用稀疏图形的前沿处理部分对应的肺部肺部分割

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In this paper, we propose a new segmentation algorithm that combines a graph-based shape model with image cues based on boosted features. The landmark-based shape model encodes prior constraints through the normalized Euclidean distances between pairs of control points, alleviating the need of a large database for the training. Moreover, the graph topology is deduced from the dataset using manifold learning and unsupervised clustering. In a graph-matching-like manner, we formulate the segmentation task as a labeling problem where we seek to match the model landmarks to image points that are extracted using the boosted classifiers. We also propose to overcome the limitation of missing correspondences by incorporating an additional label to account for outliers. Then, we repair the outlier positions to complete the segmentation. State-of-the-art discrete optimization techniques are used to provide our experimental results for the segmentation of the right lung in 2D chest radiographs, demonstrating the potentials of our method.
机译:在本文中,我们提出了一种新的分割算法,该算法基于提升特征将基于图形的形状模型结合了与图像提示。基于地标的形状模型通过对照点对之间的归一化欧几里德距离进行了预约,减轻了对训练的大型数据库的需要。此外,使用歧管学习和无监督群集从数据集推导出图形拓扑。以图形匹配的方式,我们将分段任务制定为标签问题,我们寻求将模型地标与使用升级分类器提取的图像点相匹配。我们还建议通过纳入额外标签来克服缺失的对应关系来解释异常值。然后,我们修复了异常位置以完成分割。最先进的离散优化技术用于提供我们在2D胸部射线照片中右肺分割的实验结果,展示了我们方法的潜力。

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