3D motion estimation including scene flow and point cloud registration has drawn increasing interest. Inspired by 2D flow estimation, recent methods employ deep neural networks to construct the cost volume for estimating accurate 3D flow. However, these methods are limited by the fact that it is difficult to define a search window on point clouds because of the irregular data structure. In this paper, we avoid this irregularity by a simple yet effective method.We decompose the problem into two interlaced stages, where the 3D flows are optimized point-wisely at the first stage and then globally regularized in a recurrent network at the second stage. Therefore, the recurrent network only receives the regular point-wise information as the input. In the experiments, we evaluate the proposed method on both the 3D scene flow estimation and the point cloud registration task. For 3D scene flow estimation, we make comparisons on the widely used FlyingThings3D and KITTIdatasets. For point cloud registration, we follow previous works and evaluate the data pairs with large pose and partially overlapping from ModelNet40. The results show that our method outperforms the previous method and achieves a new state-of-the-art performance on both 3D scene flow estimation and point cloud registration, which demonstrates the superiority of the proposed zero-order method on irregular point cloud data.
翻译:3D运动估计,包括现场流和点云登记,引起了越来越多的兴趣。在 2D 流量估计的启发下,最近的方法采用深神经网络来构建成本量以估算准确的 3D 流量。然而,由于数据结构不正常,很难在点云上确定搜索窗口,因此这些方法受到限制。在本文中,我们通过简单而有效的方法避免了这种不规则性。我们将问题分解到两个相互交错的阶段,在第一阶段,3D 流量是最佳的点,然后在第二阶段,在一个经常性网络中进行全球正规化。因此,经常网络只收到定期的点信息作为输入。在实验中,我们评估了3D 场流估计和点云登记工作的拟议方法。关于3D 3D 场流量估计,我们比较了广泛使用的飞航3D 和 KITTI 数据集。关于点云登记,我们遵循以往的工程,评估具有大面和与模型40 部分重叠的数据配对。结果显示,我们的方法在前一个方法上优于先前的方法,而在新的云层上也展示了一个新的数据流- 度的轨道上,从而展示了云度的轨道的状态的运行。