Functional Grasping
Functional grasping research aims to enable robots to grasp and manipulate objects effectively, mirroring human dexterity and adaptability. Current efforts concentrate on developing robust and generalizable grasping policies using reinforcement learning, novel geometric representations (e.g., point clouds, graph neural networks), and large language models to incorporate semantic understanding of tasks and objects. This field is crucial for advancing robotics in diverse applications, from assistive devices and surgery to warehouse automation and household robotics, by improving the reliability and efficiency of robotic manipulation.
Papers
QwenGrasp: A Usage of Large Vision-Language Model for Target-Oriented Grasping
Xinyu Chen, Jian Yang, Zonghan He, Haobin Yang, Qi Zhao, Yuhui Shi
Differentiable Robot Neural Distance Function for Adaptive Grasp Synthesis on a Unified Robotic Arm-Hand System
Yiting Chen, Xiao Gao, Kunpeng Yao, Loïc Niederhauser, Yasemin Bekiroglu, Aude Billard