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A level set method based on additive bias correction for image segmentation

机译:基于图像分割添加偏压校正的级别集方法

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摘要

Intensity inhomogeneity brings great difficulties to image segmentation. This problem is partly solved by the multiplicative bias field correction model. However, some other problems still exist, such as slow segmentation speed and narrow application field. In this paper, an additive bias correction (ABC) model based on intensity inhomogeneity is proposed. The model divides the observed image into three parts: additive bias function, reflection edge structure function and Gaussian noise. Firstly, the local area and local clustering criterion of intensity inhomogeneity are defined. Secondly, by introducing the level set function, the local clustering criterion is transformed into an energy function based on the level set model. Finally, the structure of the estimated bias field and the reflection edge is computed through the process of minimizing the energy function while the image is segmented. In order to improve the stability of the system, a de-parameterized regularization function and an adaptive data-driven term function are designed. Compared with the traditional multiplicative model, the addition model has faster calculation speed. The proposed model can obtain ideal segmentation effect for images with intensity inhomogeneity. Experiment results show that the proposed method is more robust, faster and more accurate than traditional piecewise and multiplicative models.
机译:强度不均匀性对图像分割带来了很大的困难。该问题由乘法偏置场校正模型部分解决。但是,仍然存在一些其他问题,例如慢分割速度和窄应用领域。本文提出了一种基于强度不均匀性的添加偏压校正(ABC)模型。该模型将观察到的图像分为三个部分:添加偏置函数,反射边缘结构功能和高斯噪声。首先,定义了强度不均匀性的局部区域和局部聚类标准。其次,通过引入级别集功能,将本地聚类标准转换为基于级别集模型的能量函数。最后,通过在分割图像的同时最小化能量函数的过程来计算估计的偏置场和反射边缘的结构。为了提高系统的稳定性,设计了解参数化正则化功能和自适应数据驱动术语功能。与传统的乘法模型相比,加法模型具有更快的计算速度。该模型可以获得具有强度不均匀性的图像的理想分段效果。实验结果表明,该方法比传统的分段和乘法型号更加坚固,更快,更准确。

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