Point cloud registration (PCR) is a popular research topic in computer vision. Recently, the registration method in an evolutionary way has received continuous attention because of its robustness to the initial pose and flexibility in objective function design. However, most evolving registration methods cannot tackle the local optimum well and they have rarely investigated the success ratio, which implies the probability of not falling into local optima and is closely related to the practicality of the algorithm. Evolutionary multi-task optimization (EMTO) is a widely used paradigm, which can boost exploration capability through knowledge transfer among related tasks. Inspired by this concept, this study proposes a novel evolving registration algorithm via EMTO, where the multi-task configuration is based on the idea of solution space cutting. Concretely, one task searching in cut space assists another task with complex function landscape in escaping from local optima and enhancing successful registration ratio. To reduce unnecessary computational cost, a sparse-to-dense strategy is proposed. In addition, a novel fitness function robust to various overlap rates as well as a problem-specific metric of computational cost is introduced. Compared with 7 evolving registration approaches and 4 traditional registration approaches on the object-scale and scene-scale registration datasets, experimental results demonstrate that the proposed method has superior performances in terms of precision and tackling local optima.
翻译:最近,以渐进方式进行的登记方法因其对初始面貌的稳健性和客观功能设计的灵活性而不断受到关注。然而,大多数不断演变的登记方法无法解决当地最佳水井问题,它们很少调查成功率,这意味着有可能不进入当地选法,并与算法的实用性密切相关。进化多任务优化(EMTO)是一个广泛使用的范例,可以通过相关任务之间的知识转让提高勘探能力。受这一概念的启发,本研究报告提出通过EMTO进行新的不断演变的登记算法,多任务配置以缩小空间解决方案的理念为基础。具体地说,在缩小空间时,一项任务有助于另一个复杂的功能环境,摆脱当地选制,提高成功登记率。为了减少不必要的计算成本,还提出了一种从零到多任务优化的战略。此外,还引入了一种适应各种重叠率的新功能,以及一个针对具体问题的计算成本衡量标准。与7种不断发展的登记方法和4种传统注册方法相比,多任务配置基于缩小空间的理念,在缩小空间范围内进行搜索有助于另一个复杂的功能环境环境,摆脱当地的选制,加强成功的登记比率,从而显示对目标的精确度和场景尺度上的拟议精确度数据进行了处理。