Self-Supervised 3D Scene Flow Estimation and Motion Prediction Using Local Rigidity Prior.

Ruibo Li, Chi Zhang, Zhe Wang, Chunhua Shen, Guosheng Lin
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Abstract

In this article, we investigate self-supervised 3D scene flow estimation and class-agnostic motion prediction on point clouds. A realistic scene can be well modeled as a collection of rigidly moving parts, therefore its scene flow can be represented as a combination of rigid motion of these individual parts. Building upon this observation, we propose to generate pseudo scene flow labels for self-supervised learning through piecewise rigid motion estimation, in which the source point cloud is decomposed into local regions and each region is treated as rigid. By rigidly aligning each region with its potential counterpart in the target point cloud, we obtain a region-specific rigid transformation to generate its pseudo flow labels. To mitigate the impact of potential outliers on label generation, when solving the rigid registration for each region, we alternately perform three steps: establishing point correspondences, measuring the confidence for the correspondences, and updating the rigid transformation based on the correspondences and their confidence. As a result, confident correspondences will dominate label generation, and a validity mask will be derived for the generated pseudo labels. By using the pseudo labels together with their validity mask for supervision, models can be trained in a self-supervised manner. Extensive experiments on FlyingThings3D and KITTI datasets demonstrate that our method achieves new state-of-the-art performance in self-supervised scene flow learning, without any ground truth scene flow for supervision, even performing better than some supervised counterparts. Additionally, our method is further extended to class-agnostic motion prediction and significantly outperforms previous state-of-the-art self-supervised methods on nuScenes dataset.

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利用局部刚度先验进行自监督三维场景流估计和运动预测
本文研究了点云上的自监督三维场景流估计和类无关运动预测。现实场景可以很好地建模为刚性运动部件的集合,因此其场景流可以表示为这些单个部件刚性运动的组合。基于这一观点,我们建议通过片断刚性运动估计生成用于自监督学习的伪场景流标签,其中源点云被分解为局部区域,每个区域都被视为刚性区域。通过将每个区域与其在目标点云中的潜在对应点进行刚性对齐,我们得到了特定区域的刚性变换,从而生成伪场景流标签。为了减少潜在异常值对标签生成的影响,在解决每个区域的刚性配准时,我们交替执行三个步骤:建立点对应关系、测量对应关系的置信度,以及根据对应关系及其置信度更新刚性变换。因此,可信的对应关系将主导标签的生成,并为生成的伪标签导出有效性掩码。通过使用伪标签及其有效性掩码进行监督,可以以自我监督的方式训练模型。在 FlyingThings3D 和 KITTI 数据集上进行的大量实验表明,我们的方法在自监督场景流学习方面取得了新的一流性能,无需任何地面真实场景流进行监督,甚至比某些监督式的同类方法性能更好。此外,我们的方法还进一步扩展到了类无关运动预测,并在 nuScenes 数据集上显著超越了之前最先进的自监督方法。
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