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ROI-based Robotic Grasp Detection for Object Overlapping Scenes

机译:基于ROI的机器人掌握对象重叠场景的检测

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Grasp detection considering the affiliations between grasps and their owner in object overlapping scenes is a necessary and challenging task for the practical use of the robotic grasping approach. In this paper, a robotic grasp detection algorithm named ROI-GD is proposed to provide a feasible solution to this problem based on Region of Interest (ROI), which is the region proposal for objects. ROI-GD uses features from ROIs to detect grasps instead of the whole scene. It has two stages: the first stage is to provide ROIs in the input image and the second-stage is the grasp detector based on ROI features. We also contribute a multi-object grasp dataset, (a) which is much larger than Cornell Grasp Dataset, by labeling Visual Manipulation Relationship Dataset. Experimental results demonstrate that ROI-GD performs much better in object overlapping scenes and at the meantime, remains comparable with state-of-the-art grasp detection algorithms on Cornell Grasp Dataset and Jacquard Dataset. Robotic experiments demonstrate that ROI-GD can help robots grasp the target in single-object and multi-object scenes with the overall success rates of 92.5% and 83.8% respectively.
机译:掌握检测考虑到对象重叠场景中掌握和其所有者之间的陪审团是一个必要和具有挑战性的机器人抓取方法的特征任务。在本文中,提出了一种名为ROI-GD的机器人掌握检测算法,以基于感兴趣区域(ROI)的这个问题提供可行的解决方案,这是对象的区域提议。 ROI-GD使用ROI的功能来检测GRASP而不是整个场景。它有两个阶段:第一阶段是在输入图像中提供ROI,并且第二级是基于ROI特征的掌握探测器。通过标记可视化操作关系数据集,我们还提供了一个多对象抓取数据集,(a)比康奈尔掌握数据集要大得多。实验结果表明,ROI-GD在对象重叠场景中表现得更好,与此同时,与康奈尔掌握数据集和提花数据集上的最先进的掌握检测算法保持比较。机器人实验表明,ROI-GD可以帮助机器人把目标掌握在单一物体和多物体场景中,总成功率分别为92.5%和83.8%。

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