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Interactive segmentation method with graph cut and SVMs

机译:具有图割和支持向量机的交互式分割方法

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Medical image segmentation is a prerequisite for visualization and diagnosis. State-of-the-art techniques of image segmentation concentrate on interactive methods which are more robust than automatic techniques and more efficient than manual delineation. In this paper, we present an interactive segmentation method for medical images which relates to graph cut based on Support Vector Machines (SVMs). The proposed method is a hybrid method that combines three aspects. First, the user selects seed points to paint object and background using a "brush", and then the labeled pixels/voxels data including intensity value and gradient of the sampled points are used as training set for SVMs training process. Second, the trained SVMs model is employed to predict the probability of which classifications each unlabeled pixel/voxel belongs to. Third, unlike traditional Gaussian Mixture Model (GMM) definition for region properties in graph cut method, negative log-likelihood of the obtained probability of each pixel/voxel from SVMs model is used to define t-links in graph cut method and the classical max-flow/min-cut algorithm is applied to minimize the energy function. Finally, the proposed method is applied in 2D and 3D medical image segmentation. The experiment results demonstrate availability and effectiveness of the proposed method.
机译:医学图像分割是可视化和诊断的先决条件。图像分割的最新技术集中于交互式方法,该方法比自动技术更健壮,比手动轮廓更有效。在本文中,我们提出了一种基于支持向量机(SVM)的与图割相关的医学图像交互式分割方法。所提出的方法是结合了三个方面的混合方法。首先,用户使用“画笔”选择种子点来绘制对象和背景,然后将包括强度值和采样点梯度的标记像素/体素数据用作SVM训练过程的训练集。其次,训练有素的SVM模型用于预测每个未标记像素/体素所属的分类的概率。第三,与传统的高斯混合模型(GMM)定义的图切割方法中的区域属性不同,从SVM模型获得的每个像素/体素概率的负对数似然性用于定义图切割方法中的t链和经典最大-flow / min-cut算法用于最小化能量函数。最后,将所提出的方法应用于2D和3D医学图像分割中。实验结果证明了该方法的有效性和有效性。

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