Existing learning-based point feature descriptors are usually task-agnostic, which pursue describing the individual 3D point clouds as accurate as possible. However, the matching task aims at describing the corresponding points consistently across different 3D point clouds. Therefore these too accurate features may play a counterproductive role due to the inconsistent point feature representations of correspondences caused by the unpredictable noise, partiality, deformation, \etc, in the local geometry. In this paper, we propose to learn a robust task-specific feature descriptor to consistently describe the correct point correspondence under interference. Born with an Encoder and a Dynamic Fusion module, our method EDFNet develops from two aspects. First, we augment the matchability of correspondences by utilizing their repetitive local structure. To this end, a special encoder is designed to exploit two input point clouds jointly for each point descriptor. It not only captures the local geometry of each point in the current point cloud by convolution, but also exploits the repetitive structure from paired point cloud by Transformer. Second, we propose a dynamical fusion module to jointly use different scale features. There is an inevitable struggle between robustness and discriminativeness of the single scale feature. Specifically, the small scale feature is robust since little interference exists in this small receptive field. But it is not sufficiently discriminative as there are many repetitive local structures within a point cloud. Thus the resultant descriptors will lead to many incorrect matches. In contrast, the large scale feature is more discriminative by integrating more neighborhood information. ...
翻译:现有基于学习的点特征描述符通常都是任务- 不可知性, 以尽可能准确的方式描述单个 3D 点云层。 但是, 匹配任务的目的是在不同的 3D 点云层中连贯地描述对应点。 因此, 这些过于准确的特征可能会起到反作用, 因为本地几何中由于不可预测的噪音、 偏向性、 变形、\etc 造成的对函式表达方式不一致。 在本文中, 我们建议学习一个强大的任务特定特征描述符, 以一致描述干扰下的正确点对应。 由一个编码和动态融合模块诞生, 我们的方法 EDFNet 是从两个方面发展起来的。 首先, 我们通过重复性的本地结构来增加对应点的匹配性。 对于这个目的, 一个特殊的编码器可以同时利用两个输入点标注的云云层的表达方式。 它不仅通过卷积的云层来捕捉当前点云层中的每个点的局部几度, 而且还利用由变换器对点云层云层云层中的许多重复性结构。 其次, 我们建议一个动态融合模块模块化模块, 共同使用不同的缩缩缩缩缩度结构。 。 从一个必然的缩缩缩缩略性地, 。