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Bin-Picking using Model-Free Visual Heuristics and Grasp-Constrained Imaging

机译:使用无模型的视觉启发式谱和掌握受限的成像

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Automation technologies for bin-picking are increasingly sought after in industrial applications related to material handling and order fulfillment. In this paper, we present a model-free approach to robotic bin-picking which is designed to be highly adaptable to varying imaging conditions such as lighting, rotations, scaling, shadows, etc., and highly flexible to large number of items. The proposed object imaging approach is based on visual registration through color over-segmentation with depth imaging correction. Furthermore, we propose a computationally efficient object grasp pose estimation algorithm based on planar constrained geometry on the manipulator and imaging system.We validated the performance of our imaging method using publicly available RGBD data sets, and we measured the timing and grasp repeatability using physical experiments conducted with an industrial manipulator. Results show that our grasp success rates are comparable to recently published methods, but our grasp computation speeds are considerably faster. In particular, measured image processing and grasp calculation times are of the order of 300 fps for 320x240 image size, and will scale linearly with the imaging area.
机译:在与物料搬运和订单履行有关的工业应用中,越来越多地寻求垃圾采摘自动化技术。在本文中,我们提出了一种用于机器人宾馆的无模型方法,该方法旨在适应不同的成像条件,例如照明,旋转,缩放,阴影等,以及大量的物品。所提出的对象成像方法是基于具有深度成像校正的颜色过分分割的视觉登记。此外,我们提出了一种基于机械手和成像系统的平面约束几何形状的计算上有效的对象掌握算法。我们使用公开的RGBD数据集验证了我们的成像方法的性能,并且我们使用物理实验测量了定时和掌握重复性用工业操纵器进行。结果表明,我们的掌握成功率与最近发表的方法相当,但我们的掌握计算速度更快。特别地,测量的图像处理和掌握计算次数为320x240图像尺寸的300 fps的顺序,并且将与成像区域线性绘制。

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