Robarts Research Institute, University of Western Ontario, PO Box 5015, 100 Perth Drive, London, ON N6A5K8, Canada.
IEEE Trans Pattern Anal Mach Intell. 2010 Jun;32(6):1084-96. doi: 10.1109/TPAMI.2009.81.
Medial representations of shapes are useful due to their use of an object-centered coordinate system that directly captures intuitive notions of shape such as thickness, bending, and elongation. However, it is well known that an object's medial axis transform (MAT) is unstable with respect to small perturbations of its boundary. This instability results in additional, unwanted branches in the skeletons, which must be pruned in order to recover the portions of the skeletons arising purely from the uncorrupted shape information. Almost all approaches to skeleton pruning compute a significance measure for each branch according to some heuristic criteria, and then prune the least significant branches first. Current approaches to branch significance computation can be classified as either local, solely using information from a neighborhood surrounding each branch, or global, using information about the shape as a whole. In this paper, we propose a third, groupwise approach to branch significance computation. We develop a groupwise skeletonization framework that yields a fuzzy significance measure for each branch, derived from information provided by the group of shapes. We call this framework the Groupwise Medial Axis Transform (G-MAT). We propose and evaluate four groupwise methods for computing branch significance and report superior performance compared to a recent, leading method. We measure the performance of each pruning algorithm using denoising, classification, and within-class skeleton similarity measures. This research has several applications, including object retrieval and shape analysis.
形状的中轴表示法很有用,因为它们使用以物体为中心的坐标系,直接捕捉到形状的直观概念,如厚度、弯曲和拉伸。然而,众所周知,物体的中轴变换(MAT)对于其边界的小扰动是不稳定的。这种不稳定性导致骨架中出现额外的、不需要的分支,为了恢复纯粹来自未损坏形状信息的骨架部分,必须修剪这些分支。
几乎所有的骨架修剪方法都是根据一些启发式标准为每个分支计算一个显著度度量,然后首先修剪最不重要的分支。当前的分支显著度计算方法可以分为局部方法,仅使用每个分支周围的邻域信息,或全局方法,使用整个形状的信息。在本文中,我们提出了第三种基于分组的分支显著度计算方法。我们开发了一种基于分组的骨架化框架,为每个分支生成一个模糊显著度度量,该度量来自于分组形状提供的信息。我们将这个框架称为分组中轴变换(G-MAT)。
我们提出并评估了四种用于计算分支显著度的分组方法,并报告了与最近的领先方法相比的优越性能。我们使用去噪、分类和类内骨架相似性度量来衡量每个修剪算法的性能。这项研究有几个应用,包括目标检索和形状分析。