A robotic system that can autonomously recognize object and grasp it in a real scene with heavy occlusion would be desirable. In this paper, we integrate the techniques of object detection, pose estimation and grasping plan on Kinova Gen3 (KG3), a 7 degrees of freedom (DOF) robotic arm with a low-performance native camera sensor, to implement an autonomous real-time 6 dimensional (6D) robotic grasping system. To estimate the object 6D pose, the pixel-wise voting network (PV-net), is applied in the grasping system. However, the PV-net method can not distinguish the object from its photo through only RGB image input. To meet the demands of a real industrial environment, a rapid analytical method on a point cloud is developed to judge whether the detected object is real or not. In addition, our system shows a stable and robust performance in different installation positions with heavily cluttered scenes.
Single RGB Image 6D Object Grasping System Using Pixel-Wise Voting Network.
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作者:Zhang Zhongjie, Zhou Chengzhe, Koike Yasuharu, Li Jiamao
| 期刊: | Micromachines | 影响因子: | 3.000 |
| 时间: | 2022 | 起止号: | 2022 Feb 13; 13(2):293 |
| doi: | 10.3390/mi13020293 | ||
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