Wang Lei, Chen Guangqiang, Shi Dai, Chang Yan, Chan Sixian, Pu Jiantao, Yang Xiaodong
Medical Imaging Department, Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou, China.
Departments of Radiology and Bioengineering, University of Pittsburgh, Pittsburgh, USA.
Signal Processing. 2018 Aug;149:27-35. doi: 10.1016/j.sigpro.2018.02.025. Epub 2018 Mar 8.
Active contour models have been widely used for image segmentation purposes. However, they may fail to delineate objects of interest depicted on images with intensity inhomogeneity. To resolve this issue, a novel image feature, termed as local edge entropy, is proposed in this study to reduce the negative impact of inhomogeneity on image segmentation. An active contour model is developed on the basis of this feature, where an edge entropy fitting (EEF) energy is defined with the combination of a redesigned regularization term. Minimizing the energy in a variational level set formulation can successfully drive the motion of an initial contour curve towards optimal object boundaries. Experiments on a number of test images demonstrate that the proposed model has the capability of handling intensity inhomogeneity with reasonable segmentation accuracy.
活动轮廓模型已被广泛用于图像分割目的。然而,它们可能无法勾勒出强度不均匀图像上所描绘的感兴趣对象。为了解决这个问题,本研究提出了一种新的图像特征,称为局部边缘熵,以减少不均匀性对图像分割的负面影响。基于此特征开发了一种活动轮廓模型,其中通过重新设计的正则化项的组合定义了边缘熵拟合(EEF)能量。在变分水平集公式中最小化能量可以成功地驱动初始轮廓曲线朝着最优对象边界移动。在多个测试图像上进行的实验表明,所提出的模型具有以合理的分割精度处理强度不均匀性的能力。