An Economic Framework for 6-DoF Grasp Detection
Xiao-Ming Wu, Jia-Feng Cai, Jian-Jian Jiang, Dian Zheng, Yi-Lin Wei,, Wei-Shi Zheng

TL;DR
This paper introduces EconomicGrasp, an efficient framework for 6-DoF robotic grasp detection that reduces training resources significantly while maintaining state-of-the-art performance.
Contribution
It proposes an economic supervision paradigm and a focal representation module to improve grasp detection efficiency and accuracy.
Findings
Surpasses SOTA by about 3AP on average
Reduces training time by 75%
Cuts memory and storage costs significantly
Abstract
Robotic grasping in clutters is a fundamental task in robotic manipulation. In this work, we propose an economic framework for 6-DoF grasp detection, aiming to economize the resource cost in training and meanwhile maintain effective grasp performance. To begin with, we discover that the dense supervision is the bottleneck of current SOTA methods that severely encumbers the entire training overload, meanwhile making the training difficult to converge. To solve the above problem, we first propose an economic supervision paradigm for efficient and effective grasping. This paradigm includes a well-designed supervision selection strategy, selecting key labels basically without ambiguity, and an economic pipeline to enable the training after selection. Furthermore, benefit from the economic supervision, we can focus on a specific grasp, and thus we devise a focal representation module, which…
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Taxonomy
TopicsRobot Manipulation and Learning · Hand Gesture Recognition Systems · Motor Control and Adaptation
MethodsFocus
