Pairwise point cloud registration is a critical task for many applications, which heavily depends on finding correct correspondences from the two point clouds. However, the low overlap between input point clouds causes the registration to fail easily, leading to mistaken overlapping and mismatched correspondences, especially in scenes where non-overlapping regions contain similar structures. In this paper, we present a unified bird's-eye view (BEV) model for jointly learning of 3D local features and overlap estimation to fulfill pairwise registration and loop closure. Feature description is performed by a sparse UNet-like network based on BEV representation, and 3D keypoints are extracted by a detection head for 2D locations, and a regression head for heights. For overlap detection, a cross-attention module is applied for interacting contextual information of input point clouds, followed by a classification head to estimate the overlapping region. We evaluate our unified model extensively on the KITTI dataset and Apollo-SouthBay dataset. The experiments demonstrate that our method significantly outperforms existing methods on overlap estimation, especially in scenes with small overlaps. It also achieves top registration performance on both datasets in terms of translation and rotation errors.
翻译:Pairwith点云登记是许多应用的关键任务,这在很大程度上取决于从两个点云中找到正确的通信。然而,输入点云之间的低重叠导致登记容易失败,导致错误的重叠和不匹配的通信,特别是在非重叠区域包含类似结构的场景中。在本文中,我们展示了一个统一的鸟眼观察模型,用于共同学习三维本地特征和重叠估计,以进行双向登记和循环关闭。特征描述由一个分散的类似UNet的网络进行,以BEV表示方式为基础,3D关键点通过2D地点的探测头和高度的回归头进行提取。对于重叠检测,一个交叉注意模块用于输入点云的交互背景信息,随后是分类头,以估计重叠区域。我们广泛评价了KITTI数据集和Apolopolo-SouthBay数据集的统一模型。实验表明,我们的方法大大超出了现有重叠估计方法,特别是在与小重叠场景中。对于数据设置和旋转错误的数据集,它也实现了顶级登记业绩。</s>