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Deep learning for picking point detection in dense cluster

机译:深度学习用于密集集群中的选取点检测

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This paper considers the problem of picking objects in cluster. This requires the robot to reliably detect the picking point for the known or unseen objects under the environment with occlusion, disorder and a variety of objects. We present a novel pipeline to detect picking point based on deep convolutional neural network (CNN). A two-dimensional picking configuration is proposed, thus an extensive data augmentation strategy is enabled and a labeled dataset is established quickly and easily. At last, we demonstrate the implementation of our method on a real robot and show that our method can accurately detect picking point of unseen objects and achieve a pick success of 91% in cluster bin-picking scenario.
机译:本文考虑了在集群中选择对象的问题。这就要求机器人在存在遮挡,无序和各种物体的环境下,可靠地检测已知或不可见物体的拾取点。我们提出了一种基于深度卷积神经网络(CNN)的新型管道来检测拣选点。提出了一种二维采摘配置,从而启用了广泛的数据扩充策略,并可以快速,轻松地建立标记的数据集。最后,我们演示了该方法在真实机器人上的实现,并表明该方法可以准确地检测出看不见的物体的拾取点,在聚类箱拣选场景中的拣选成功率达到91%。

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