Point clouds captured by scanning devices are often incomplete due to occlusion. Point cloud completion aims to predict the complete shape based on its partial input. Existing methods can be classified into supervised and unsupervised methods. However, both of them require a large number of 3D complete point clouds, which are difficult to capture. In this paper, we propose Cross-PCC, an unsupervised point cloud completion method without requiring any 3D complete point clouds. We only utilize 2D images of the complete objects, which are easier to capture than 3D complete and clean point clouds. Specifically, to take advantage of the complementary information from 2D images, we use a single-view RGB image to extract 2D features and design a fusion module to fuse the 2D and 3D features extracted from the partial point cloud. To guide the shape of predicted point clouds, we project the predicted points of the object to the 2D plane and use the foreground pixels of its silhouette maps to constrain the position of the projected points. To reduce the outliers of the predicted point clouds, we propose a view calibrator to move the points projected to the background into the foreground by the single-view silhouette image. To the best of our knowledge, our approach is the first point cloud completion method that does not require any 3D supervision. The experimental results of our method are superior to those of the state-of-the-art unsupervised methods by a large margin. Moreover, compared to some supervised methods, our method achieves similar performance. We will make the source code publicly available at https://github.com/ltwu6/cross-pcc.
翻译:扫描设备所捕捉的点云往往由于隐蔽性而不完整。 点云完成的目的是根据部分输入预测完整的形状。 现有方法可以分类为受监督和不受监督的方法。 但是, 这两种方法都需要大量3D完整点云, 很难捕捉。 在本文中, 我们建议Cross- PCC, 一种未经监督的点云完成方法, 不需要任何 3D 完整点云。 我们只使用完整对象的 2D 图像, 这些图像比 3D 完整和清洁点云更容易捕捉。 具体地说, 为了利用 2D 图像中的补充信息, 我们使用单视图 RGB 图像来提取 2D 特性, 并设计一个组合模块, 将 2D 完整点和 3D 特征从部分云中提取出来, 很难捕捉到 3D 。 为了引导预测点云云云的形状, 我们将目标的预测点的点值值值值值投影到预测点的位置。 我们用预测的离点的值源源, 我们建议一个视图校准点, 将一个大点比较, 将我们预测的代码 将预测到 3- 方法 向地面。