Registration is a transformation estimation problem between two point clouds, which has a unique and critical role in numerous computer vision applications. The developments of optimization-based methods and deep learning methods have improved registration robustness and efficiency. Recently, the combinations of optimization-based and deep learning methods have further improved performance. However, the connections between optimization-based and deep learning methods are still unclear. Moreover, with the recent development of 3D sensors and 3D reconstruction techniques, a new research direction emerges to align cross-source point clouds. This survey conducts a comprehensive survey, including both same-source and cross-source registration methods, and summarize the connections between optimization-based and deep learning methods, to provide further research insight. This survey also builds a new benchmark to evaluate the state-of-the-art registration algorithms in solving cross-source challenges. Besides, this survey summarizes the benchmark data sets and discusses point cloud registration applications across various domains. Finally, this survey proposes potential research directions in this rapidly growing field.
翻译:优化方法和深层学习方法的开发提高了注册的稳健性和效率。最近,优化和深层学习方法的结合进一步提高了绩效。不过,优化和深层学习方法之间的联系仍然不清楚。此外,随着3D传感器和3D重建技术的最近开发,出现了一个新的研究方向,以协调跨源码云。这项调查进行了全面的调查,包括同源和跨源登记方法,并总结了优化和深层学习方法之间的联系,以提供进一步的研究见解。这项调查还建立了一个新的基准,用以评估解决跨源挑战的最新登记算法。此外,这项调查还概述了基准数据集,并讨论了不同领域的点云登记应用。最后,这项调查提出了这一快速发展领域的潜在研究方向。