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Probabilistic shape-based segmentation method using level sets

机译:水平集的基于概率形状的分割方法

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In this study, a novel probabilistic, geometric and dynamic shape-based level sets method is proposed. The shape prior is coupled with the intensity information to enhance the segmentation results. The two-dimensional principal component analysis method is applied on the training shapes to represent the shape variation with enough number of shape projections in the training step. The shape model is constructed using the implicit representation of the projected shapes. A new energy functional is proposed (i) to embed the shape model into the image domain and (ii) to estimate the shape coefficients. The proposed method is validated on synthetic and clinical images with various challenges such as the noise, occlusion and missing information. The authors compare their method with some of related works. Experiments show that the proposed segmentation method is more accurate and robust than other alternatives under different challenges.
机译:在这项研究中,提出了一种新的基于概率,几何和动态形状的水平集方法。形状先验与强度信息耦合以增强分割结果。将二维主成分分析方法应用于训练形状,以表示训练步骤中具有足够数量的形状投影的形状变化。形状模型是使用投影形状的隐式表示构造的。提出了一种新的能量函数(i)将形状模型嵌入图像域,并(ii)估计形状系数。所提出的方法在具有各种挑战(例如噪声,遮挡和信息丢失)的合成和临床图像上得到了验证。作者将他们的方法与一些相关工作进行了比较。实验表明,提出的分割方法在不同挑战下比其他方法更准确,更健壮。

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