Critical to the registration of point clouds is the establishment of a set of accurate correspondences between points in 3D space. The correspondence problem is generally addressed by the design of discriminative 3D local descriptors on the one hand, and the development of robust matching strategies on the other hand. In this work, we first propose a multi-view local descriptor, which is learned from the images of multiple views, for the description of 3D keypoints. Then, we develop a robust matching approach, aiming at rejecting outlier matches based on the efficient inference via belief propagation on the defined graphical model. We have demonstrated the boost of our approaches to registration on the public scanning and multi-view stereo datasets. The superior performance has been verified by the intensive comparisons against a variety of descriptors and matching methods.
翻译:对点云登记至关重要的是建立一套3D空间各点之间的精确对应关系。对应问题通常通过设计歧视性的 3D 本地描述符和制定强有力的匹配战略来解决。在这项工作中,我们首先提出一个多视角的地方描述符,从多个观点的图像中学习,用于描述3D 关键点。然后,我们制定了一个强有力的匹配方法,旨在拒绝基于通过对界定的图形模型进行信仰传播的有效推论的外部匹配。我们已经展示了我们在公共扫描和多视角立体数据集登记方法的推动。通过对各种描述符和匹配方法的密集比较,已经验证了优异的绩效。</s>