Robotic Grasping Based on 6D Pose Estimation from Single View
收藏DataCite Commons2025-04-27 更新2025-04-16 收录
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https://www.scidb.cn/detail?dataSetId=448d98ba68f346e3b2ffff190727afe7
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资源简介:
In real-world scenarios, the diversity of object types and random placement can lead to difficulties in object recognition for intelligent robots, resulting in a low success rate in grasping. A method for robot grasping in complex situations such as occlusion, multiple targets of the same type, and stacking is proposed to address this issue. A single view 6D pose estimation network with encoder decoder structure was designed based on channel attention mechanism ECA and residual network ResNet; A 6D pose estimation and grasping training dataset was generated using a synthetic dataset production method; The robot grasping control module controls the UR5 robot to achieve intelligent grasping based on the output of the 6D pose estimation network and the results of hand eye calibration. The experimental results on Linemod, YCB Video, and the synthesized dataset in this paper show that the average grasping success rate of our method reaches 95%, which can meet the needs of robot grasping.
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Science Data Bank
创建时间:
2024-08-30



