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A Level Set Algorithm Based on Probabilistic Statistics for MR Image Segmentation

机译:基于概率统计的水平集MR图像分割算法

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MR image segmentation is of great importance in medical image application. MR images have the characteristics of intensity inhomogeneities, strong background interference and blurred target area. These characteristics will greatly increase the difficulty of segmentation and affect image segmentation results. To obtain the satisfied performance of MR image segmentation, a level set algorithm based on probabilistic statistics for MR image segmentation is proposed. Because of the intensity inhomogeneity of the image, a bias field is used to describe the image in the proposed model. But the addition of a bias field will increase the amount of computation. Therefore, combining with the probabilistic statistical theory, the energy function is defined by the pixel distribution probability to improve operational efficiency. In addition, a new rule item is added to enhance the edge information of the image to highlight the edge segmentation curve. Experimental results show that the proposed model behaves well in segmenting MR images.
机译:MR图像分割在医学图像应用中非常重要。 MR图像具有强度不均匀,强烈的背景干扰和目标区域模糊的特征。这些特征将大大增加分割的难度,并影响图像的分割结果。为了获得满意的MR图像分割性能,提出了一种基于概率统计的MR图像分割水平集算法。由于图像的强度不均匀性,在所提出的模型中使用偏置场来描述图像。但是增加一个偏置字段将增加计算量。因此,结合概率统计理论,能量函数由像素分布概率定义,以提高操作效率。另外,添加了新的规则项以增强图像的边缘信息以突出显示边缘分割曲线。实验结果表明,该模型在分割MR图像中表现良好。

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