There have been two streams in the 3D detection from point clouds: single-stage methods and two-stage methods. While the former is more computationally efficient, the latter usually provides better detection accuracy. By carefully examining the two-stage approaches, we have found that if appropriately designed, the first stage can produce accurate box regression. In this scenario, the second stage mainly rescores the boxes such that the boxes with better localization get selected. From this observation, we have devised a single-stage anchor-free network that can fulfill these requirements. This network, named AFDetV2, extends the previous work by incorporating a self-calibrated convolution block in the backbone, a keypoint auxiliary supervision, and an IoU prediction branch in the multi-task head. As a result, the detection accuracy is drastically boosted in the single-stage. To evaluate our approach, we have conducted extensive experiments on the Waymo Open Dataset and the nuScenes Dataset. We have observed that our AFDetV2 achieves the state-of-the-art results on these two datasets, superior to all the prior arts, including both the single-stage and the two-stage 3D detectors. AFDetV2 won the 1st place in the Real-Time 3D Detection of the Waymo Open Dataset Challenge 2021. In addition, a variant of our model AFDetV2-Base was entitled the "Most Efficient Model" by the Challenge Sponsor, showing a superior computational efficiency. To demonstrate the generality of this single-stage method, we have also applied it to the first stage of the two-stage networks. Without exception, the results show that with the strengthened backbone and the rescoring approach, the second stage refinement is no longer needed.
翻译:3D 从点云中检测到两个串流。 单阶段方法和两阶段方法。 前者在计算上效率更高, 后者通常提供更好的检测准确性。 通过仔细检查两阶段方法, 我们发现, 如果设计得当, 第一阶段可以产生准确的框回归。 在这一场景中, 第二阶段主要是将框重新集中, 以便选择具有更好的本地化的框。 从此观察中, 我们设计了一个能够满足这些要求的单阶段无锚网络。 这个名为 AFDetV2 的网络扩大了先前的工作, 在骨干中加入一个自我校准的凝固连接块, 后者通常提供更好的检测准确性。 通过仔细检查两阶段, 我们的检测准确性在单阶段得到大幅提高。 为了评估我们的方法, 我们在Waymo Open Dal数据集中进行了广泛的实验。 我们观察到, AFDV2 在这两套数据集中, 在主干部的自我校准组合中, 在前一阶段和第二阶段展示了一个更高级的Oral- Drea, 展示了一个更高级的A- 版本, 在第一阶段显示一个更高级的A- Streal- dreal- drea- dreal 演示的A- dal 演示的A- dreal 展示, 在第二阶段显示一个更需要一个更高级的A- sal- dal- dreal- sal- dal- sal- dal- dreal 演示的A- preal) 一级显示一个更进一步显示一个更需要一个更进一步的A- sal- sal- sal- 。