The distinguishing geometric features determine the success of point cloud registration. However, most point clouds are partially overlapping, corrupted by noise, and comprised of indistinguishable surfaces, which makes it a challenge to extract discriminative features. Here, we propose the Neighborhood-aware Geometric Encoding Network (NgeNet) for accurate point cloud registration. NgeNet utilizes a geometric guided encoding module to take geometric characteristics into consideration, a multi-scale architecture to focus on the semantically rich regions in different scales, and a consistent voting strategy to select features with proper neighborhood size and reject the specious features. The awareness of adaptive neighborhood points is obtained through the multi-scale architecture accompanied by voting. Specifically, the proposed techniques in NgeNet are model-agnostic, which could be easily migrated to other networks. Comprehensive experiments on indoor, outdoor and object-centric synthetic datasets demonstrate that NgeNet surpasses all of the published state-of-the-art methods. The code will be available at https://github.com/zhulf0804/NgeNet.
翻译:显著的几何特征决定了点云登记的成功。 然而,大多数点云是部分重叠的,被噪音腐蚀,由无法区分的表面组成,因此很难提取有区别的特征。在这里,我们提议了邻里-觉的几何编码网络(NgeNet),以便准确点云登记。NgeNet使用几何制导编码模块来考虑几何特性,一个以不同尺度的精致丰富的区域为重点的多尺度结构,以及一个选择具有适当邻里大小的特征并拒绝显眼特征的一致的投票战略。适应性邻里点的认识是通过投票伴随的多尺度结构获得的。具体地说,NgeNet中的拟议技术是模型-氮学技术,可以很容易迁移到其他网络。关于室内、室外和以物体为中心的合成数据集的综合实验表明,NgeNet超过了所有已公布的状态-艺术方法。该代码将在https://github.com/zhulf0804/NgeNet上查阅。