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A Variational Level Set Approach Based on Local Entropy for Image Segmentation and Bias Field Correction

机译:基于局部熵的变分水平集图像分割与偏置场校正

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摘要

Image segmentation has always been a considerable challenge in image analysis and understanding due to the intensity inhomogeneity, which is also commonly known as bias field. In this paper, we present a novel region-based approach based on local entropy for segmenting images and estimating the bias field simultaneously. Firstly, a local Gaussian distribution fitting (LGDF) energy function is defined as a weighted energy integral, where the weight is local entropy derived from a grey level distribution of local image. The means of this objective function have a multiplicative factor that estimates the bias field in the transformed domain. Then, the bias field prior is fully used. Therefore, our model can estimate the bias field more accurately. Finally, minimization of this energy function with a level set regularization term, image segmentation, and bias field estimation can be achieved. Experiments on images of various modalities demonstrated the superior performance of the proposed method when compared with other state-of-the-art approaches.
机译:由于强度不均匀(通常也称为偏置场),图像分割一直是图像分析和理解中的重大挑战。在本文中,我们提出了一种基于局部熵的新颖的基于区域的方法,用于分割图像并同时估计偏置场。首先,将局部高斯分布拟合(LGDF)能量函数定义为加权能量积分,其中权重是从局部图像的灰度分布得出的局部熵。该目标函数的均值具有一个乘法因子,用于估计变换域中的偏置场。然后,偏置场先验被充分利用。因此,我们的模型可以更准确地估计偏置场。最后,可以使用水平集正则项,图像分割和偏置场估计来最小化此能量函数。与其他最新方法相比,各种形式的图像上的实验证明了该方法的优越性能。

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