论文标题
LSMAT最小二乘内侧轴变换
LSMAT Least Squares Medial Axis Transform
论文作者
论文摘要
内侧轴变换在许多字段中都有应用,包括可视化,计算机图形和计算机视觉。不幸的是,在沿物体边界的异常值,扰动和/或噪声的存在下,传统的内侧轴变换通常是脆弱的。为了克服这一局限性,我们引入了内侧轴变换的新表述,该公式在存在这些伪影的情况下自然很强。与以前从计算几何角度接近内侧轴的工作不同,我们从数值优化的角度将其考虑。在这项工作中,我们按照内侧轴的定义为“最大铭文球体”。我们展示了如何将该定义作为最少平方放松,其中通过最大程度地减少连续优化问题而获得转换。所提出的方法可以固有地通过使用高斯 - 纽顿对每个球体进行独立优化,而其最小二乘形式与传统的计算几何方法相比,其最小二乘形式可以明显更强。对2D和3D对象的广泛实验表明,我们的方法在合成和真实数据方面都为最先进的状态提供了卓越的结果。
The medial axis transform has applications in numerous fields including visualization, computer graphics, and computer vision. Unfortunately, traditional medial axis transformations are usually brittle in the presence of outliers, perturbations and/or noise along the boundary of objects. To overcome this limitation, we introduce a new formulation of the medial axis transform which is naturally robust in the presence of these artifacts. Unlike previous work which has approached the medial axis from a computational geometry angle, we consider it from a numerical optimization perspective. In this work, we follow the definition of the medial axis transform as "the set of maximally inscribed spheres". We show how this definition can be formulated as a least squares relaxation where the transform is obtained by minimizing a continuous optimization problem. The proposed approach is inherently parallelizable by performing independant optimization of each sphere using Gauss-Newton, and its least-squares form allows it to be significantly more robust compared to traditional computational geometry approaches. Extensive experiments on 2D and 3D objects demonstrate that our method provides superior results to the state of the art on both synthetic and real-data.