Multi-view point cloud registration is fundamental in 3D reconstruction. Since there are close connections between point clouds captured from different viewpoints, registration performance can be enhanced if these connections be harnessed properly. Therefore, this paper models the registration problem as multi-task optimization, and proposes a novel bi-channel knowledge sharing mechanism for effective and efficient problem solving. The modeling of multi-view point cloud registration as multi-task optimization are twofold. By simultaneously considering the local accuracy of two point clouds as well as the global consistency posed by all the point clouds involved, a fitness function with an adaptive threshold is derived. Also a framework of the co-evolutionary search process is defined for the concurrent optimization of multiple fitness functions belonging to related tasks. To enhance solution quality and convergence speed, the proposed bi-channel knowledge sharing mechanism plays its role. The intra-task knowledge sharing introduces aiding tasks that are much simpler to solve, and useful information is shared across aiding tasks and the original tasks, accelerating the search process. The inter-task knowledge sharing explores commonalities buried among the original tasks, aiming to prevent tasks from getting stuck to local optima. Comprehensive experiments conducted on model object as well as scene point clouds show the efficacy of the proposed method.
翻译:多视图云登记在3D重建中至关重要。由于从不同角度收集的点云之间有着密切的联系,因此,如果适当地利用这些联系,登记绩效是可以提高的。因此,本文将登记问题作为多任务优化模型,并提议一个创新的双通道知识共享机制,以便有效和高效解决问题。多任务优化时,多视图云登记模式是双重的。同时考虑两点云的当地准确性以及所有相关点云构成的全球一致性,可以产生一个适应性阈值的健身功能。还确定了共同革命搜索进程框架,以同时优化属于相关任务的多重健身功能。为了提高解决方案质量和趋同速度,拟议的双通道知识共享机制发挥了作用。任务内部知识共享引入了简单易解的辅助任务,而有用的信息在协助任务和最初任务之间共享,加快搜索进程。任务间知识共享探索了原始任务之间的共性,目的是防止任务被困在本地的节能中,目的是防止任务被困在本地的节能中。在模型对象上进行全面实验,同时展示了拟议中的云的功效。