Joint estimation of grasped object pose and externally made contact on the object is central to robust and dexterous manipulation. In this paper, we propose a novel state-estimation algorithm that jointly estimates contact location and object pose in 3D using exclusively proprioceptive tactile feedback. Our approach leverages two complementary particle filters: one to estimate contact location (CPFGrasp) and another to estimate object poses (SCOPE). We implement and evaluate our approach on real-world single-arm and dual-arm robotic systems. We demonstrate how by bringing two objects into contact, the robots can infer contact location and object poses simultaneously. Our proposed method can be applied to a number of downstream tasks that require accurate pose estimates, such as assembly and insertion.
翻译:在本文中,我们提出一种新的国家估计算法,即利用完全自行感知的触觉反馈,共同估计接触位置和物体在三维中的位置和位置。我们的方法利用两个互补粒子过滤器:一个是估计接触位置(CPFGrasp),另一个是估计物体构成(SCOPE),我们实施和评估我们关于现实世界单臂和双臂机器人系统的方法。我们通过将两个物体连接到接触中来,我们证明机器人可以同时推断接触位置和物体构成。我们提议的方法可以适用于一些需要准确估计的下游任务,例如组装和插入。