Despite the success of deep functional maps in non-rigid 3D shape matching, there exists no learning framework that models both self-symmetry and shape matching simultaneously. This is despite the fact that errors due to symmetry mismatch are a major challenge in non-rigid shape matching. In this paper, we propose a novel framework that simultaneously learns both self symmetry as well as a pairwise map between a pair of shapes. Our key idea is to couple a self symmetry map and a pairwise map through a regularization term that provides a joint constraint on both of them, thereby, leading to more accurate maps. We validate our method on several benchmarks where it outperforms many competitive baselines on both tasks.
翻译:尽管深海功能地图在非硬体 3D 形状匹配中取得了成功,但是没有同时模拟自我对称和形状匹配的学习框架。 尽管对称错配是非硬体形状匹配中的一大挑战, 但事实上由于对称错配是非硬体形状匹配中的一大挑战。 在本文中,我们提出了一个新框架,既同时学习自我对称,又同时学习一对形状之间的对称图。 我们的关键想法是通过一个正规化术语将自我对称图和对称地图结合起来,这给两者带来共同的制约,从而导致更准确的地图。 我们验证了我们在若干基准上的方法,因为它在两个任务上都比许多竞争性基准都好。