In this paper, we focus on the robot grasping problem with parallel grippers using image data. For this task, we propose and implement an end-to-end approach. In order to detect the good grasping poses for a parallel gripper from RGB images, we have employed transfer learning for a Convolutional Neural Network (CNN) based object detection architecture. Our obtained results show that, the adapted network either outperforms or is on-par with the state-of-the art methods on a benchmark dataset. We also performed grasping experiments on a real robot platform to evaluate our method's real world performance.
Róbinson Jiménez MorenoMauricio MauledouxB. Martinez
Weixing OuyangWenhui HuangHuasong Min
Xiangting CaiXin XuShuai RenYifei Shi
Shengjun XuLiang BaiHuangwei ZhongYuji HuXiao Wei SunHongqiang Lyu