MaskNet:一个估计内线点的全卷积网络

Vinit Sarode, Animesh Dhagat, Rangaprasad Arun Srivatsan, N. Zevallos, S. Lucey, H. Choset
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引用次数: 18

摘要

点云在计算机感知世界的方式中越来越重要。从自动驾驶汽车和无人机上的激光雷达传感器到我们手机上的飞行时间和立体视觉系统,点云无处不在。尽管点云无处不在,但在现实世界中,由于传感器的限制或遮挡,点云经常丢失点,或者包含来自传感器噪声或伪影的无关点。这些问题挑战了需要计算一对点云之间对应关系的算法。因此,本文提出了一个全卷积神经网络来识别一个点云中哪些点与另一个点云中哪些点最相似(内线)。当使用我们的网络进行改造时,我们展示了基于学习和经典点云配准方法的改进。我们在合成数据集和真实数据集上展示了这些改进。最后,我们的网络在训练过程中看不到的测试数据集上产生了令人印象深刻的结果,从而展示了可泛化性。代码和视频可在https://github.com/vinits5/masknet上获得
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MaskNet: A Fully-Convolutional Network to Estimate Inlier Points
Point clouds have grown in importance in the way computers perceive the world. From LIDAR sensors in autonomous cars and drones to the time of flight and stereo vision systems in our phones, point clouds are everywhere. Despite their ubiquity, point clouds in the real world are often missing points because of sensor limitations or occlusions, or contain extraneous points from sensor noise or artifacts. These problems challenge algorithms that require computing correspondences between a pair of point clouds. Therefore, this paper presents a fully-convolutional neural network that identifies which points in one point cloud are most similar (inliers) to the points in another. We show improvements in learning-based and classical point cloud registration approaches when retrofitted with our network. We demonstrate these improvements on synthetic and real-world datasets. Finally, our network produces impressive results on test datasets that were unseen during training, thus exhibiting generalizability. Code and videos are available at https://github.com/vinits5/masknet
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