Rong, PeterJu, TaoMemari, PooranSolomon, Justin2023-06-302023-06-3020231467-8659https://doi.org/10.1111/cgf.14902https://diglib.eg.org:443/handle/10.1111/cgf14902Medial axis (MA) is a classical shape descriptor in graphics and vision. The practical utility of MA, however, is hampered by its sensitivity to boundary noise. To prune unwanted branches from MA, many definitions of significance measures over MA have been proposed. However, pruning MA using these measures often comes at the cost of shrinking desirable MA branches and losing shape features at fine scales. We propose a novel significance measure that addresses these shortcomings. Our measure is derived from a variational pruning process, where the goal is to find a connected subset of MA that includes as many points that are as parallel to the shape boundary as possible. We formulate our measure both in the continuous and discrete settings, and present an efficient algorithm on a discrete MA. We demonstrate on many examples that our measure is not only resistant to boundary noise but also excels over existing measures in preventing MA shrinking and recovering features across scales.CCS Concepts: Computing methodologies -> Shape analysisComputing methodologiesShape analysisVariational Pruning of Medial Axes of Planar Shapes10.1111/cgf.1490211 pages