Appleton Ben, Talbot Hugues
Google, Inc., 1600 Amphitheatre Parkway, Mountain View, CA 94043, USA.
IEEE Trans Pattern Anal Mach Intell. 2006 Jan;28(1):106-18. doi: 10.1109/TPAMI.2006.12.
In this paper, we address the computation of globally minimal curves and surfaces for image segmentation and stereo reconstruction. We present a solution, simulating a continuous maximal flow by a novel system of partial differential equations. Existing methods are either grid-biased (graph-based methods) or suboptimal (active contours and surfaces). The solution simulates the flow of an ideal fluid with isotropic velocity constraints. Velocity constraints are defined by a metric derived from image data. An auxiliary potential function is introduced to create a system of partial differential equations. It is proven that the algorithm produces a globally maximal continuous flow at convergence, and that the globally minimal surface may be obtained trivially from the auxiliary potential. The bias of minimal surface methods toward small objects is also addressed. An efficient implementation is given for the flow simulation. The globally minimal surface algorithm is applied to segmentation in 2D and 3D as well as to stereo matching. Results in 2D agree with an existing minimal contour algorithm for planar images. Results in 3D segmentation and stereo matching demonstrate that the new algorithm is robust and free from grid bias.
在本文中,我们探讨了用于图像分割和立体重建的全局最小曲线和曲面的计算问题。我们提出了一种解决方案,通过一个新颖的偏微分方程系统来模拟连续的最大流。现有的方法要么存在网格偏差(基于图的方法),要么是次优的(活动轮廓和曲面)。该解决方案模拟了具有各向同性速度约束的理想流体的流动。速度约束由从图像数据导出的度量来定义。引入了一个辅助势函数来创建一个偏微分方程系统。已证明该算法在收敛时会产生全局最大的连续流,并且可以从辅助势中轻松获得全局最小曲面。还解决了最小曲面方法对小物体的偏向问题。给出了一种用于流模拟的高效实现方法。全局最小曲面算法被应用于二维和三维的分割以及立体匹配。二维结果与现有的平面图像最小轮廓算法一致。三维分割和立体匹配的结果表明,新算法具有鲁棒性且无网格偏差。