To eliminate the problems of large dimensional differences, big semantic gap, and mutual interference caused by hybrid features, in this paper, we propose a novel Multi-Features Guidance Network for partial-to-partial point cloud registration(MFG). The proposed network mainly includes four parts: keypoints' feature extraction, correspondences searching, correspondences credibility computation, and SVD, among which correspondences searching and correspondence credibility computation are the cores of the network. Unlike the previous work, we utilize the shape features and the spatial coordinates to guide correspondences search independently and fusing the matching results to obtain the final matching matrix. In the correspondences credibility computation module, based on the conflicted relationship between the features matching matrix and the coordinates matching matrix, we score the reliability for each correspondence, which can reduce the impact of mismatched or non-matched points. Experimental results show that our network outperforms the current state-of-the-art while maintaining computational efficiency.
翻译:为了消除由混合特征造成的巨大维度差异、大语义差距和相互干扰等问题,我们在本文件中提议建立一个新的多功能指导网络,用于局部点至局部点云登记。拟议网络主要包括四个部分:关键点特征提取、通信搜索、通信可信度计算和SVD,其中通信搜索和通信可信度计算是网络的核心。与以往的工作不同,我们利用形状特征和空间坐标来指导通信独立搜索,并使用匹配结果来获取最终匹配矩阵。在通信可信度计算模块中,基于匹配矩阵和坐标匹配矩阵之间的冲突关系,我们为每封通信取得可靠性,这可以减少不匹配或不匹配点的影响。实验结果表明,我们的网络在保持计算效率的同时,超过了当前的状态。