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A level set method based on local direction gradient for image segmentation with intensity inhomogeneity

机译:基于局部方向梯度的强度不均匀图像分割水平集方法

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摘要

Many medical and real images are suffered from intensity inhomogeneity and weak edges. For higher image segmentation quality, lots of level set-based methods have been proposed. Some of them however cannot take advantage of image gradient information. And severe intensity inhomogeneity and weak edges are not disposed properly. To address these problems, a new level set method integrated with local direction gradient information is presented in this paper. Firstly, according to the two assumptions on image intensity inhomogeneity adopted by many existing methods, a new pixel classification model based on image gradient is introduced. Secondly, we employ variational level set method combined with image spatial information, which improves the anti-noise capability of the proposed method. Finally, considering the gray gradients in homogeneous regions are close to constants, an improved diffusion process is incorporated into the level set function to make the evolving curves stay around true image edges. To verify our method, different testing images including synthetic images, magnetic resonance imaging (MRI) and real-world images are introduced. The image segmentation results demonstrate that our method can deal with the relatively severe intensity inhomogeneity and obtain the comparatively ideal segmentation results efficiently.
机译:许多医学和真实图像都受到强度不均匀和边缘薄弱的困扰。为了获得更高的图像分割质量,已经提出了许多基于水平集的方法。但是其中一些不能利用图像梯度信息。严重的强度不均匀和边缘薄弱没有得到适当的处理。为了解决这些问题,本文提出了一种新的结合局部方向梯度信息的水平集方法。首先,根据许多现有方法采用的关于图像强度不均匀性的两个假设,提出了一种基于图像梯度的新像素分类模型。其次,我们结合图像空间信息采用变分水平集方法,提高了该方法的抗噪能力。最后,考虑到均匀区域中的灰度梯度接近常数,将改进的扩散过程并入到水平集函数中,以使演化曲线保持在真实图像边缘附近。为了验证我们的方法,引入了不同的测试图像,包括合成图像,磁共振成像(MRI)和真实世界图像。图像分割结果表明,我们的方法可以处理较严重的强度不均匀性,并能有效地获得比较理想的分割结果。

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