GoalGrasp: Grasping Goals in Partially Occluded Scenarios without Grasp Training
Shun Gui, Kai Gui, Yan Luximon

TL;DR
GoalGrasp is a novel 6-DoF grasp detection method that efficiently grasps user-specified objects, even under partial occlusion, without requiring grasp annotations or training, demonstrating high success and stability in diverse scenes.
Contribution
It introduces a training-free, object-specific grasp detection approach combining 3D bounding boxes and human grasp priors, addressing occlusion challenges.
Findings
Achieves 94% success rate in user-specified grasping
Demonstrates high grasp stability with a novel metric
Performs well under partial occlusion with 92% success
Abstract
Grasping user-specified objects is crucial for robotic assistants; however, most current 6-DoF grasp detection methods are object-agnostic, making it challenging to grasp specific targets from a scene. To achieve that, we present GoalGrasp, a simple yet effective 6-DoF robot grasp pose detection method that does not rely on grasp pose annotations and grasp training. By combining 3D bounding boxes and simple human grasp priors, our method introduces a novel paradigm for robot grasp pose detection. GoalGrasp's novelty is its swift grasping of user-specified objects and partial mitigation of occlusion issues. The experimental evaluation involves 18 common objects categorized into 7 classes. Our method generates dense grasp poses for 1000 scenes. We compare our method's grasp poses to existing approaches using a novel stability metric, demonstrating significantly higher grasp pose…
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Taxonomy
TopicsReinforcement Learning in Robotics · Evolutionary Algorithms and Applications · Teaching and Learning Programming
