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arxiv: 1412.3128 · v2 · pith:UWFCFH6Snew · submitted 2014-12-09 · 💻 cs.RO · cs.CV

Real-Time Grasp Detection Using Convolutional Neural Networks

classification 💻 cs.RO cs.CV
keywords graspmodelconstrainedconvolutionaldetectionlocallynetworknetworks
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We present an accurate, real-time approach to robotic grasp detection based on convolutional neural networks. Our network performs single-stage regression to graspable bounding boxes without using standard sliding window or region proposal techniques. The model outperforms state-of-the-art approaches by 14 percentage points and runs at 13 frames per second on a GPU. Our network can simultaneously perform classification so that in a single step it recognizes the object and finds a good grasp rectangle. A modification to this model predicts multiple grasps per object by using a locally constrained prediction mechanism. The locally constrained model performs significantly better, especially on objects that can be grasped in a variety of ways.

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  1. A Real-World Grasping-in-Clutter Performance Evaluation Benchmark for Robotic Food Waste Sorting

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    GRAB benchmark shows object quality as the dominant factor in grasp success across gripper types, with physical interaction constraints causing most failures in cluttered food waste sorting.