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3DSGrasp: 3D Shape-Completion for Robotic Grasp

Seyed Saber Mohammadi, Nuno Ferreira Duarte, Plinio Moreno, Atabak Dehban, Dimitrios Dimou, Pietro Morerio, Matteo Taiana, Yiming Wang, Alexandre Bernardino, Alessio Del Bue, José Santos-Victor

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Abstract

Real-world robotic grasping can be done robustly if a complete 3D Point Cloud Data (PCD) of an object is available. However, in practice, PCDs are often incomplete when objects are viewed from few and sparse viewpoints before the grasping action, leading to the generation of wrong or inaccu- rate grasp poses. We propose a novel grasping strategy, named 3DSGrasp , that predicts the missing geometry from the partial PCD to produce reliable grasp poses. Our proposed PCD com- pletion network is a Transformer-based encoder-decoder net- work with an Offset-Attention layer. Our network is inherently invariant to the object pose and point’s permutation, which generates PCDs that are geometrically consistent and completed properly. Experiments on a wide range of partial PCD show that 3DSGrasp outperforms the best state-of-the-art method on PCD completion tasks and largely improves the grasping success rate in real-world scenarios. The code and dataset are available at: https://github.com/NunoDuarte/3DSGrasp.

Index terms

RGB-D Perception Grasping Deep Learning Methods