基于场景流估计和卡尔曼细化的点云致密化

Yufei Que;Luqin Ye;Jie Xie;Jin Zhang;Junzhe Ding;Cheng Wu
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引用次数: 0

摘要

点云致密化是缓解点云稀疏的有效措施。在三维视觉中,多帧点云的位置关系被应用于点云致密化研究,以解释补充点来源的合理性。其中,场景流估计对于动态场景是有效的。然而,长序列动态点云的场景流估计容易产生累积定位误差。为了解决这一问题,本文提出基于卡尔曼滤波技术,从时序角度对场景流估计结果进行修正。具体来说,首先根据金字塔结构优化场景流估计模型,提高点云特征提取的可靠性。然后,结合前后帧点云的时间关系,对点云进行均匀重构,完成点云的致密化。最后,将致密化后的点云应用于三维检测任务。KITTI 三维跟踪数据集的结果表明,基于场景流估计的点云致密化方法可以有效提高纯激光雷达检测器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Point Cloud Densification Based on Scene Flow Estimation and Kalman Refinement
Point cloud densification is an effective measure to alleviate the sparseness of point clouds. In 3-D vision, the positional relationship of multiframe point clouds is applied to point cloud densification research to explain the rationality of the source of supplementary points. Among them, scene flow estimation is effective for dynamic scenes. However, scene flow estimation of long-sequence dynamic point clouds is prone to cumulative positioning errors. In order to solve this problem, this article proposes to correct the scene flow estimation results from a timing perspective based on Kalman filtering. Specifically, the scene flow estimation model is first optimized according to the pyramid structure to improve the reliability of point cloud feature extraction. Then, combined with the temporal relationship of the point clouds in the previous and later frames, the point cloud is reconstructed uniformly to complete the densification of the point cloud. Finally, the densified point cloud is applied to the 3-D detection task. Results on the KITTI 3-D tracking dataset show that the point cloud densification method based on scene flow estimation can effectively improve the performance of LiDAR-only detectors.
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