Nemec Bojan, Simonič Mihael, Ude Aleš
Humanoid and Cognitive Robotics Lab, Jožef Stefan Institute, 1000 Ljubljana, Slovenia.
Sensors (Basel). 2025 Jul 23;25(15):4567. doi: 10.3390/s25154567.
In this paper, we propose an active touch sensing algorithm designed for robust hole localization in 3D objects, specifically aimed at assembly tasks such as peg-in-hole operations. Unlike general object detection algorithms, our solution is tailored for precise localization of features like hole openings using sparse tactile feedback. The method builds on a prior 3D map of the object and employs a series of iterative search algorithms to refine localization by aligning tactile sensing data with the object's shape. It is specifically designed for objects composed of multiple parallel surfaces located at distinct heights; a common characteristic in many assembly tasks. In addition to the deterministic approach, we introduce a probabilistic version of the algorithm, which effectively compensates for sensor noise and inaccuracies in the 3D map. This probabilistic framework significantly improves the algorithm's resilience in real-world environments, ensuring reliable performance even under imperfect conditions. We validate the method's effectiveness for several assembly tasks, such as inserting a plug into a socket, demonstrating its speed and accuracy. The proposed algorithm outperforms traditional search strategies, offering a robust solution for assembly operations in industrial and domestic applications with limited sensory input.
在本文中,我们提出了一种主动触觉传感算法,该算法专为在三维物体中进行稳健的孔定位而设计,特别适用于诸如销钉插入孔操作等装配任务。与一般的物体检测算法不同,我们的解决方案是针对利用稀疏触觉反馈精确地定位诸如孔口等特征而量身定制的。该方法基于物体的先验三维地图,并采用一系列迭代搜索算法,通过将触觉传感数据与物体形状对齐来优化定位。它专门针对由位于不同高度的多个平行表面组成的物体而设计;这是许多装配任务中的一个常见特征。除了确定性方法外,我们还引入了该算法的概率版本,它有效地补偿了传感器噪声和三维地图中的不准确性。这种概率框架显著提高了算法在现实环境中的适应能力,确保即使在不完美的条件下也能有可靠的性能。我们通过几个装配任务验证了该方法的有效性,比如将插头插入插座,展示了其速度和准确性。所提出的算法优于传统搜索策略,为工业和家庭应用中感官输入有限的装配操作提供了一个稳健的解决方案。