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Two-stage grasp detection method for robotics using point clouds and deep hierarchical feature learning network

Liu, Xiaofeng; Huang, Congyu; Li, Jie; Wan, Weiwei; Yang, Chenguang

Authors

Xiaofeng Liu

Congyu Huang

Jie Li

Weiwei Wan



Abstract

When human beings see different objects, they can quickly make correct grasping strategies through brain decisions. However, grasp, as the first step of most manipulation tasks, is still an open issue in robotics. Although many detection methods have been proposed to take RGB-D images or point clouds as input and output grasp candidates, these methods are still limited to algorithm robustness, such as network performance and graspable objects. In this article, a two-stage grasp detection method is proposed, in which we first use point clouds to train the deep hierarchical feature learning network, which can better capture features of grasped points. We also consider the distribution and discrimination of grasps to construct samples. The score of point clouds is related to the quality of the relevant grasp sample. The quality is given by several grasp metrics applied to the grasp samples obtained from the YCB dataset. In the second stage, the network is used to evaluate the grasp candidates sampled from the preprocessed point clouds. The extensive simulation and real-scene experiment show that our grasp detection algorithm achieves satisfactory performance in both single and multiple objects situations. The generalization and scalability of our model also perform well under different conditions.

Journal Article Type Article
Acceptance Date Jun 25, 2023
Online Publication Date Jun 27, 2023
Publication Date Apr 30, 2024
Deposit Date Aug 22, 2023
Publicly Available Date Jun 28, 2025
Journal IEEE Transactions on Cognitive and Developmental Systems
Print ISSN 2379-8920
Electronic ISSN 2379-8939
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
Volume 16
Issue 2
Pages 720 - 731
DOI https://doi.org/10.1109/tcds.2023.3289987
Keywords Artificial Intelligence, Software
Public URL https://uwe-repository.worktribe.com/output/10912202