Jacob Mathews, Blu Thierry, Unser Michael
Biomedical Imaging Group, Ecole Polytechnique Federale, CH-1015 Lausanne, Switzerland.
IEEE Trans Image Process. 2004 Sep;13(9):1231-44. doi: 10.1109/tip.2004.832919.
Parametric active contour models are one of the preferred approaches for image segmentation because of their computational efficiency and simplicity. However, they have a few drawbacks which limit their performance. In this paper, we identify some of these problems and propose efficient solutions to get around them. The widely-used gradient magnitude-based energy is parameter dependent; its use will negatively affect the parametrization of the curve and, consequently, its stiffness. Hence, we introduce a new edge-based energy that is independent of the parameterization. It is also more robust since it takes into account the gradient direction as well. We express this energy term as a surface integral, thus unifying it naturally with the region-based schemes. The unified framework enables the user to tune the image energy to the application at hand. We show that parametric snakes can guarantee low curvature curves, but only if they are described in the curvilinear abscissa. Since normal curve evolution do not ensure constant arc-length, we propose a new internal energy term that will force this configuration. The curve evolution can sometimes give rise to closed loops in the contour, which will adversely interfere with the optimization algorithm. We propose a curve evolution scheme that prevents this condition.
参数化主动轮廓模型因其计算效率和简单性而成为图像分割的首选方法之一。然而,它们也存在一些缺点,限制了其性能。在本文中,我们识别了其中的一些问题,并提出了有效的解决方案来克服它们。广泛使用的基于梯度幅值的能量依赖于参数;其使用会对曲线的参数化产生负面影响,进而影响其刚度。因此,我们引入了一种新的基于边缘的能量,它与参数化无关。由于它还考虑了梯度方向,所以也更具鲁棒性。我们将这个能量项表示为一个曲面积分,从而自然地将其与基于区域的方法统一起来。这个统一的框架使用户能够根据手头的应用调整图像能量。我们表明,参数化蛇形模型可以保证曲线具有低曲率,但前提是它们要用曲线横坐标来描述。由于法线曲线演化不能确保弧长恒定,我们提出了一个新的内部能量项来强制实现这种配置。曲线演化有时会在轮廓中产生闭环,这会对优化算法产生不利干扰。我们提出了一种曲线演化方案来防止这种情况。