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An Expectation-Maximization Approach to Joint Curve Evolution for Medical Image Segmentation

机译:用于医学图像分割的联合曲线演化的期望最大化方法

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This paper proposes a new Expectation-Maximization curve evolution algorithm for medical image segmentation. Traditional level set algorithms perform poorly when image information is incomplete, missing or some objects are corrupted. In such cases, statistical model-based segmentation methods are widely used since they allow object shape variations subject to shape prior constraints to overcome the incomplete or noisy information. Although matching robustly in dealing with noisy and low contrast images, the shape parameters are estimated intractably through the Maximum A Posterior (MAP) framework by using incomplete image features. In this paper, we present a statistical shape-based joint curve evolution algorithm for image segmentation based on the assumption that using hidden features of the image as missing data can simplify the estimation problem and help improve the matching performance. In our method, these hidden features are designed to be the local voxel labeling data determined based on the intensity distribution of the image and priori anatomical knowledge. Using an Expectation-Maximization formulation, both the hidden features and the object shapes can be extracted. In addition, this EM-based algorithm is applied to the joint parameter and non-parameter shape model for more accurate segmentation. Comparative results on segmenting putamen and caudate shapes in MR brain images confirm both robustness and accuracy of the proposed curve evolution algorithm.
机译:提出了一种新的期望最大化曲线演化算法用于医学图像分割。当图像信息不完整,丢失或某些对象损坏时,传统的水平集算法效果不佳。在这种情况下,基于统计模型的分割方法被广泛使用,因为它们允许对象形状变化受到形状先验约束的约束,以克服不完整或嘈杂的信息。尽管在处理嘈杂和低对比度的图像时可以很好地匹配,但是形状参数是通过使用最大后验(MAP)框架使用不完整的图像特征而难以估计的。在本文中,我们提出了一种基于统计形状的联合曲线演化算法进行图像分割,该算法基于以下假设:使用图像的隐藏特征作为缺失数据可以简化估计问题,并有助于提高匹配性能。在我们的方法中,这些隐藏特征被设计为基于图像的强度分布和先验解剖知识确定的局部体素标记数据。使用期望最大化公式,可以提取隐藏特征和对象形状。此外,该基于EM的算法被应用于联合参数和非参数形状模型,以实现更精确的分割。分割脑部图像中的壳状和尾状形状的比较结果证实了所提出的曲线演化算法的鲁棒性和准确性。

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