CMG-Net: An End-to-End Contact-Based Multi-Finger Dexterous Grasping Network

Wei, Mingze, Huang, Yaomin, Xu, Zhiyuan, Liu, Ning, Che, Zhengping, Zhang, Xinyu, Shen, Chaomin, Feng, Feifei, Shan, Chun, Tang, Jian

arXiv.org Artificial Intelligence 

In this paper, we propose a novel representation for grasping using contacts between multi-finger robotic hands and objects to be manipulated. This representation significantly reduces the prediction dimensions and accelerates the learning process. We present an effective end-to-end network, CMG-Net, for grasping unknown objects in a cluttered environment by efficiently predicting multi-finger grasp poses and hand configurations from a single-shot point cloud. Moreover, we create a synthetic grasp dataset that consists of five thousand cluttered scenes, 80 object categories, and 20 million annotations. We perform a comprehensive empirical study and demonstrate the effectiveness of our grasping representation and CMG-Net. Our work significantly outperforms the state-of-the-art for three-finger robotic hands. We also demonstrate that the model trained using synthetic data performs very well for real robots.

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