4.7 Article

Rotation adaptive grasping estimation network oriented to unknown objects based on novel RGB-D fusion strategy

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.engappai.2023.105842

关键词

Robotic grasping estimation; Unknown object; Rotation-adaptive; RGB-D fusion

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This paper proposes a framework for rotation adaptive grasping estimation based on a novel RGB-D fusion strategy, which can better utilize the advantages of RGB and depth modes and suppress disadvantages, achieving spatial and rotational adaptiveness to unknown objects and poses. The method has been validated on different datasets, showing excellent accuracy and outperforming other methods.
Accurate grasping estimation is prerequisite and key to achieving accurate robotic grasping. As common data sources, existing RGB and Depth (RGB-D) fusion strategies hardly fully use the advantages and suppress the disadvantages of both modes. In addition, existing methods mainly rely on data augmentation to achieve spatial and rotation adaptation, which cannot fundamentally solve the problem. Therefore, this paper proposes a framework for rotation adaptive grasping estimation based on a novel RGB-D fusion strategy. Specifically, the RGB-D is fused with shared weights in stages based on the proposed Multi-step Weight-learning Fusion (MWF) strategy. The spatial position is encoding learned autonomously based on the proposed Rotation Adaptive Conjoin (RAC) encoder to achieve spatial and rotational adaptiveness oriented to unknown objects with unknown poses. In addition, the Multi-dimensional Interaction-guided Attention (MIA) decoding strategy based on the fused multiscale features is proposed to highlight the practical elements and suppress the invalid ones. The method has been validated on the Cornell and Jacquard grasping datasets with cross-validation accuracies of 99.3% and 94.6%. The single-object and multi-object scene grasping success rates on the robot platform are 95.625% and 87.5%, respectively. Our performance compares favorably with state-of-the-art methods.

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