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A Robotic Grasping Method using ConvNets

机译:使用COMMNET的机器人抓取方法

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In the near future, most of the industrial robots will serve as assistants involved in targeted complex manufacturing tasks which are difficult to be automated. To achieve this, it is crucial to enhance the ability of manipulators to pick and place objects from the assembly line. Reorienting and picking up pieces for assembly are difficult to be done by manipulators since, for different pieces, shapes and physical properties vary. In this work, we use Convolutional Neural Networks for recognizing a selected production piece on a cluster. Once the selected piece has been recognized, a grasping algorithm estimates the best gripper configuration so that the robot is able to pick the piece up. We tested our algorithm on grasping experiments with an ABB robot and using a common webcam as image input. We found that our implementations perform well and the robot was able to pick up a variety of objects.
机译:在不久的将来,大多数工业机器人将作为参与有针对性的复杂制造任务的助手,这很难自动化。为实现这一目标,提高操纵器从装配线拾取和放置物体的能力至关重要。由于不同的碎片,形状和物理性质,因此难以通过机械手进行重新定位和拾取组装件。在这项工作中,我们使用卷积神经网络来识别集群上的选定的生产件。一旦所选的片断已经识别,抓握算法估计了最佳夹持器配置,以便机器人能够挑选件。我们在用ABB机器人进行掌握实验并使用公共网络摄像头作为图像输入来测试我们的算法。我们发现我们的实现表现良好,机器人能够拿起各种物体。

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