School of Electrical Engineering, Yanshan University, Qinhuangdao 066012, China.
Sensors (Basel). 2021 May 31;21(11):3818. doi: 10.3390/s21113818.
The peg-in-hole task with object feature uncertain is a typical case of robotic operation in the real-world unstructured environment. It is nontrivial to realize object perception and operational decisions autonomously, under the usual visual occlusion and real-time constraints of such tasks. In this paper, a Bayesian networks-based strategy is presented in order to seamlessly combine multiple heterogeneous senses data like humans. In the proposed strategy, an interactive exploration method implemented by hybrid Monte Carlo sampling algorithms and particle filtering is designed to identify the features' estimated starting value, and the memory adjustment method and the inertial thinking method are introduced to correct the target position and shape features of the object respectively. Based on the Dempster-Shafer evidence theory (D-S theory), a fusion decision strategy is designed using probabilistic models of forces and positions, which guided the robot motion after each acquisition of the estimated features of the object. It also enables the robot to judge whether the desired operation target is achieved or the feature estimate needs to be updated. Meanwhile, the pliability model is introduced into repeatedly perform exploration, planning and execution steps to reduce interaction forces, the number of exploration. The effectiveness of the strategy is validated in simulations and in a physical robot task.
具有物体特征不确定性的销钉入孔任务是机器人在真实非结构化环境中操作的典型范例。在这种任务通常存在视觉遮挡和实时性约束的情况下,自主实现物体感知和操作决策并非易事。在本文中,提出了一种基于贝叶斯网络的策略,以便像人类一样无缝地组合多种异构感知数据。在提出的策略中,设计了一种通过混合蒙特卡罗采样算法和粒子滤波实现的交互式探索方法,以识别特征的估计起始值,并引入记忆调整方法和惯性思维方法来分别修正物体的目标位置和形状特征。基于 Dempster-Shafer 证据理论(D-S 理论),设计了一种使用力和位置概率模型的融合决策策略,该策略指导机器人在每次获取物体特征的估计值后进行运动。它还使机器人能够判断是否达到了所需的操作目标,或者是否需要更新特征估计。同时,引入了灵活性模型来重复执行探索、规划和执行步骤,以减少交互力和探索次数。该策略在仿真和物理机器人任务中得到了验证。