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arxiv: 1603.01564 · v2 · pith:2DHTCIBYnew · submitted 2016-03-04 · 💻 cs.RO

High precision grasp pose detection in dense clutter

classification 💻 cs.RO
keywords graspdetectionknowledgepriorcandidatesclutterdensedepth
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This paper considers the problem of grasp pose detection in point clouds. We follow a general algorithmic structure that first generates a large set of 6-DOF grasp candidates and then classifies each of them as a good or a bad grasp. Our focus in this paper is on improving the second step by using depth sensor scans from large online datasets to train a convolutional neural network. We propose two new representations of grasp candidates, and we quantify the effect of using prior knowledge of two forms: instance or category knowledge of the object to be grasped, and pretraining the network on simulated depth data obtained from idealized CAD models. Our analysis shows that a more informative grasp candidate representation as well as pretraining and prior knowledge significantly improve grasp detection. We evaluate our approach on a Baxter Research Robot and demonstrate an average grasp success rate of 93% in dense clutter. This is a 20% improvement compared to our prior work.

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

    cs.RO 2026-02 conditional novelty 7.0

    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.