Accurately and robustly estimating the state of deformable linear objects (DLOs), such as ropes and wires, is crucial for DLO manipulation and other applications. However, it remains a challenging open issue due to the high dimensionality of the state space, frequent occlusion, and noises. This paper focuses on learning to robustly estimate the states of DLOs from single-frame point clouds in the presence of occlusions using a data-driven method. We propose a novel two-branch network architecture to exploit global and local information of input point cloud respectively and design a fusion module to effectively leverage both the advantages. Simulation and real-world experimental results demonstrate that our method can generate globally smooth and locally precise DLO state estimation results even with heavily occluded point clouds, which can be directly applied to real-world robotic manipulation of DLOs in 3-D space.
翻译:精确和有力地估计可变形线性物体(如绳索和线线条)的状况,对于DLO的操纵和其他应用至关重要,然而,由于国家空间的高度维度、频繁的隐蔽和噪音,这仍然是一个具有挑战性的未决问题。本文件侧重于学习如何用数据驱动的方法,从单体点云中以强力估计DLO的状况,同时使用数据驱动的方法进行隔离。我们提议建立一个新型的双部门网络架构,分别利用输入点云的全球和地方信息,并设计一个集成模块,以有效利用两者的优势。模拟和现实世界实验结果表明,我们的方法即使在高度隐蔽的点云中也能产生全球平稳和当地精确的DLO国家估计结果,这些结果可以直接应用于3D空间对DLO的实时机器人操纵。