2023
DOI: 10.48550/arxiv.2303.16102
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GP3D: Generalized Pose Estimation in 3D Point Clouds: A case study on bin picking

Abstract: In this paper, we present GP3D, a novel network for generalized pose estimation in 3D point clouds. The method generalizes to new objects by using both the scene point cloud and the object point cloud with keypoint indexes as input. The network is trained to match the object keypoints to scene points.To address the pose estimation of novel objects we also present a new approach for training pose estimation. The typical solution is a single model trained for pose estimation of a specific object in any scenario.… Show more

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