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VK-Net: Category-Level Point Cloud Registration with Unsupervised Rotation Invariant Keypoints

机译:VK-NET:类别级点云注册与无监督的旋转不变基点

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In this paper, we propose VK-Net, a neural network that learns to discover a set of category-specific keypoints from a single point cloud in an unsupervised manner. VK-Net is able to generate semantically consistent and rotation invariant keypoints across objects of the same category and different views. Particularly, we find that utilizing learned keypoints for the task of point cloud registration outperforms other traditional and learning-based approaches. Given the paired source and target point clouds, we can construct keypoint correspondences from learned keypoints using VK-Net. These keypoint correspondences are then employed to calculate a good pose initialization, after which an ICP is utilized to refine the registration. Extensive experiments on the ShapeNet dataset demonstrate that our model outperforms the state-of-the-art methods by a large margin.
机译:在本文中,我们提出了一种神经网络,这是一个神经网络,了解以无监督方式从单点云发现一组特定的特定关键点。 VK-NET能够在相同类别的对象和不同视图的对象生成语义一致和旋转不变性关键点。 特别是,我们发现利用历史记录的关键点,为点云注册的任务优于其他基于传统和学习的方法。 给定配对的源和目标点云,我们可以使用VK-net从学习的关键点构造关键点对应关系。 然后采用这些关键点对应,以计算良好的姿势初始化,之后使用ICP来优化注册。 ShapEnet DataSet上的广泛实验表明,我们的模型优于最先进的方法,通过大边缘。

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