Robotics Dexterous Grasping: The Methods Based on Point Cloud and Deep Learning

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Abstract

Dexterous manipulation, especially dexterous grasping, is a primitive and crucial ability of robots that allows the implementation of performing human-like behaviors. Deploying the ability on robots enables them to assist and substitute human to accomplish more complex tasks in daily life and industrial production. A comprehensive review of the methods based on point cloud and deep learning for robotics dexterous grasping from three perspectives is given in this paper. As a new category schemes of the mainstream methods, the proposed generation-evaluation framework is the core concept of the classification. The other two classifications based on learning modes and applications are also briefly described afterwards. This review aims to afford a guideline for robotics dexterous grasping researchers and developers.

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Duan, H., Wang, P., Huang, Y., Xu, G., Wei, W., & Shen, X. (2021, June 9). Robotics Dexterous Grasping: The Methods Based on Point Cloud and Deep Learning. Frontiers in Neurorobotics. Frontiers Media S.A. https://doi.org/10.3389/fnbot.2021.658280

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