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simmediumgraspingmetric · varies

Sim-to-Real Grasp Detection with Global-to-Local RGB-D Adaptation

Description

This paper focuses on the sim-to-real issue of RGB-D grasp detection and formulates it as a domain adaptation problem. In this case, we present a global-to-local method to address hybrid domain gaps in RGB and depth data and insufficient multi-modal feature alignment. First, a self-supervised rotation pre-training strategy is adopted to deliver robust initialization for RGB and depth networks. We then propose a global-to-local alignment pipeline with individual global domain classifiers for scen

Source

http://arxiv.org/abs/2403.11511v1