Grasping Grasping in GRASP (特集 マニピュレーション研究の最前線)

Grasping and manipulation of objects is an important research problem in the area of robotics and has been addressed both from an analytical and an empirical perspective. In Europe, there have been several large-scale projects that studied different aspects of this problem: HANDLE, GRASP, DEXMART, PACOPLUS, TOMSY, THE, to name a few. We summarize some of the main ideas and results from the GRASP project (www.grasp-project.eu).

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