Despite advancements in 6D pose estimation, challenges persist due to object symmetries and domain gaps. SD-Net addresses these issues with a new network architecture. It introduces a robust keypoint selection strategy considering object symmetry class and a filtering algorithm to eliminate ambiguity. The self-training domain adaptation framework enhances learning abilities. Experimental results show significant improvements over state-of-the-art methods on Sil´eane and Parametric datasets. Real-world experiments demonstrate the effectiveness of SD-Net in robotic grasping tasks.
다른 언어로
소스 콘텐츠 기반
arxiv.org
더 깊은 질문