2021
DOI: 10.48550/arxiv.2102.12096
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PFRL: Pose-Free Reinforcement Learning for 6D Pose Estimation

Abstract: 6D pose estimation from a single RGB image is a challenging and vital task in computer vision. The current mainstream deep model methods resort to 2D images annotated with real-world ground-truth 6D object poses, whose collection is fairly cumbersome and expensive, even unavailable in many cases. In this work, to get rid of the burden of 6D annotations, we formulate the 6D pose refinement as a Markov Decision Process and impose on the reinforcement learning approach with only 2D image annotations as weakly-sup… Show more

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