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.
Real-Time Grasp Detection Using Convolutional Neural Networks
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abstract
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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cs.RO 1years
2026 1verdicts
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A Real-World Grasping-in-Clutter Performance Evaluation Benchmark for Robotic Food Waste Sorting
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.