Active contour models have been widely used in image segmentation, and the level set method (LSM) is the most popular approach for solving the models, via implicitly representing the contour by a level set function. However, the LSM suffers from high computational burden and numerical instability, requiring additional regularization terms or re-initialization techniques. In this paper, we use characteristic functions to implicitly represent the contours, propose a new representation to the geodesic active contours and derive an efficient algorithm termed as the iterative convolution-thresholding method (ICTM). Compared to the LSM, the ICTM is simpler and much more efficient. In addition, the ICTM enjoys most desired features of the level set-based methods. Extensive experiments, on 2D synthetic, 2D ultrasound, 3D CT, and 3D MR images for nodule, organ and lesion segmentation, demonstrate that the proposed method not only obtains comparable or even better segmentation results (compared to the LSM) but also achieves significant acceleration.
翻译:主动轮廓模型被广泛用于图像分层,定级方法(LSM)是解决模型的最受欢迎的方法,通过一个定级函数暗含地代表轮廓。然而,LSM有很高的计算负担和数字不稳定性,需要额外的正规化条件或重新启用技术。在本文中,我们使用特征功能暗含着轮廓,提议对大地界主动轮廓进行新的表示,并产生一种称为迭代脉冲法(ICTM)的高效算法。与LSM相比,ICTM更简单,效率更高。此外,ICTM拥有基于定级方法的最理想的特征。关于2D合成、2D超声、3DCT和3D MM 图像的大规模实验显示,拟议方法不仅取得了可比较甚至更好的分解结果(与LSM相比),而且取得了显著的加速。