Data association is important in the point cloud registration. In this work, we propose to solve the partial-to-partial registration from a new perspective, by introducing feature interactions between the source and the reference clouds at the feature extraction stage, such that the registration can be realized without the explicit mask estimation or attentions for the overlapping detection as adopted previously. Specifically, we present FINet, a feature interaction-based structure with the capability to enable and strengthen the information associating between the inputs at multiple stages. To achieve this, we first split the features into two components, one for the rotation and one for the translation, based on the fact that they belong to different solution spaces, yielding a dual branches structure. Second, we insert several interaction modules at the feature extractor for the data association. Third, we propose a transformation sensitivity loss to obtain rotation-attentive and translation-attentive features. Experiments demonstrate that our method performs higher precision and robustness compared to the state-of-the-art traditional and learning-based methods.
翻译:在云层点登记中,数据关联很重要。 在这项工作中,我们建议从新的角度解决部分到部分的注册问题,方法是在特征提取阶段引入源与参考云之间的特征互动,这样就可以在没有明确掩码估计或注意以前通过的重叠检测的情况下实现注册。具体地说,我们介绍了基于功能的互动结构FINet,这是一个基于功能的互动结构,有能力在多个阶段促成和加强投入之间的信息关联。为了实现这一点,我们首先将特征分为两个组成部分,一个用于旋转,另一个用于翻译,基于它们属于不同的解决方案空间,产生双重分支结构。第二,我们在数据组合的特征提取器上插入了几个互动模块。第三,我们提出了一种转换灵敏性损失,以获得旋转惯用和翻译惯用特征。实验表明,我们的方法与最先进的传统和学习方法相比,具有更高的精确性和稳健性。