Tian Yun, Chen Qingli, Wang Wei, Peng Yu, Wang Qingjun, Duan Fuqing, Wu Zhongke, Zhou Mingquan
College of Information Science & Technology, Beijing Normal University, Beijing 100875, China.
Business School, Henan Normal University, Xinxiang 453007, China.
Biomed Res Int. 2014;2014:106490. doi: 10.1155/2014/106490. Epub 2014 Jul 1.
This paper proposes a vessel active contour model based on local intensity weighting and a vessel vector field. Firstly, the energy function we define is evaluated along the evolving curve instead of all image points, and the function value at each point on the curve is based on the interior and exterior weighted means in a local neighborhood of the point, which is good for dealing with the intensity inhomogeneity. Secondly, a vascular vector field derived from a vesselness measure is employed to guide the contour to evolve along the vessel central skeleton into thin and weak vessels. Thirdly, an automatic initialization method that makes the model converge rapidly is developed, and it avoids repeated trails in conventional local region active contour models. Finally, a speed-up strategy is implemented by labeling the steadily evolved points, and it avoids the repeated computation of these points in the subsequent iterations. Experiments using synthetic and real vessel images validate the proposed model. Comparisons with the localized active contour model, local binary fitting model, and vascular active contour model show that the proposed model is more accurate, efficient, and suitable for extraction of the vessel tree from different medical images.
本文提出了一种基于局部强度加权和血管矢量场的血管主动轮廓模型。首先,我们定义的能量函数是沿着演化曲线而不是所有图像点进行评估的,并且曲线上每个点的函数值基于该点局部邻域内的内部和外部加权均值,这有利于处理强度不均匀性。其次,采用从血管性度量导出的血管矢量场来引导轮廓沿着血管中心骨架演化,以适应细小和微弱的血管。第三,开发了一种使模型快速收敛的自动初始化方法,避免了传统局部区域主动轮廓模型中的反复试验。最后,通过标记稳定演化的点来实现加速策略,避免了在后续迭代中对这些点的重复计算。使用合成血管图像和真实血管图像进行的实验验证了所提出的模型。与局部主动轮廓模型、局部二值拟合模型和血管主动轮廓模型的比较表明,所提出的模型更准确、高效,适用于从不同医学图像中提取血管树。