Zhu Fan, Wang Liangliang, Wen Yilin, Yang Lei, Pan Jia, Wang Zheng, Wang Wenping
Department of Computer Science, The University of Hong Kong, Hong Kong, Hong Kong.
Department of Mechanical Engineering, The University of Hong Kong, Hong Kong, Hong Kong.
Front Neurorobot. 2021 Mar 8;15:570507. doi: 10.3389/fnbot.2021.570507. eCollection 2021.
The success of a robotic pick and place task depends on the success of the entire procedure: from the grasp planning phase, to the grasp establishment phase, then the lifting and moving phase, and finally the releasing and placing phase. Being able to detect and recover from grasping failures throughout the entire process is therefore a critical requirement for both the robotic manipulator and the gripper, especially when considering the almost inevitable object occlusion by the gripper itself during the robotic pick and place task. With the rapid rising of soft grippers, which rely heavily on their under-actuated body and compliant, open-loop control, less information is available from the gripper for effective overall system control. Tackling on the effectiveness of robotic grasping, this work proposes a hybrid policy by combining visual cues and proprioception of our gripper for the effective failure detection and recovery in grasping, especially using a proprioceptive self-developed soft robotic gripper that is capable of contact sensing. We solved failure handling of robotic pick and place tasks and proposed (1) more accurate pose estimation of a known object by considering the edge-based cost besides the image-based cost; (2) robust object tracking techniques that work even when the object is partially occluded in the system and achieve mean overlap precision up to 80%; (3) contact and contact loss detection between the object and the gripper by analyzing internal pressure signals of our gripper; (4) robust failure handling with the combination of visual cues under partial occlusion and proprioceptive cues from our soft gripper to effectively detect and recover from different accidental grasping failures. The proposed system was experimentally validated with the proprioceptive soft robotic gripper mounted on a collaborative robotic manipulator, and a consumer-grade RGB camera, showing that combining visual cues and proprioception from our soft actuator robotic gripper was effective in improving the detection and recovery from the major grasping failures in different stages for the compliant and robust grasping.
从抓取规划阶段,到抓取建立阶段,再到提升和移动阶段,最后是释放和放置阶段。因此,能够在整个过程中检测并从抓取失败中恢复,对于机器人操纵器和夹具来说都是一项关键要求,尤其是在考虑机器人抓取和放置任务期间夹具自身几乎不可避免地会遮挡物体的情况时。随着软夹具的迅速兴起,软夹具严重依赖其欠驱动本体和柔顺的开环控制,从夹具获取的用于有效整体系统控制的信息较少。针对机器人抓取的有效性问题,这项工作提出了一种混合策略,通过结合视觉线索和我们夹具的本体感觉来实现抓取过程中的有效故障检测和恢复,特别是使用一种能够进行接触感知的自主研发的本体感受软机器人夹具。我们解决了机器人抓取和放置任务的故障处理问题,并提出了:(1) 通过除基于图像的代价之外考虑基于边缘的代价,对已知物体进行更精确的姿态估计;(2) 即使在物体在系统中部分被遮挡时也能工作且平均重叠精度高达80%的鲁棒物体跟踪技术;(3) 通过分析我们夹具的内部压力信号来检测物体与夹具之间的接触和接触丢失;(4) 结合部分遮挡下的视觉线索和我们软夹具的本体感受线索进行鲁棒的故障处理,以有效地检测并从不同的意外抓取失败中恢复。所提出的系统通过安装在协作机器人操纵器上的本体感受软机器人夹具和消费级RGB相机进行了实验验证,结果表明,结合我们软驱动机器人夹具的视觉线索和本体感受,对于柔顺且鲁棒的抓取,在不同阶段从主要抓取失败中进行检测和恢复是有效的。