Recent years have witnessed the rapid progress of perception algorithms on top of LiDAR, a widely adopted sensor for autonomous driving systems. These LiDAR-based solutions are typically data hungry, requiring a large amount of data to be labeled for training and evaluation. However, annotating this kind of data is very challenging due to the sparsity and irregularity of point clouds and more complex interaction involved in this procedure. To tackle this problem, we propose FLAVA, a systematic approach to minimizing human interaction in the annotation process. Specifically, we divide the annotation pipeline into four parts: find, localize, adjust and verify. In addition, we carefully design the UI for different stages of the annotation procedure, thus keeping the annotators to focus on the aspects that are most important to each stage. Furthermore, our system also greatly reduces the amount of interaction by introducing a light-weight yet effective mechanism to propagate the annotation results. Experimental results show that our method can remarkably accelerate the procedure and improve the annotation quality.
翻译:近些年来,在LiDAR这一自主驱动系统广泛采用的传感器之上的认知算法取得了迅速的进展。这些基于LiDAR的解决方案通常是数据饥饿,需要为培训和评估贴上大量数据标签;然而,由于点云的宽度和不规则性以及这一程序中涉及的更为复杂的互动,说明这类数据非常具有挑战性。为了解决这一问题,我们建议FLAVA采取系统的办法,在批注过程中尽量减少人的互动。具体地说,我们将批注管道分为四个部分:发现、本地化、调整和核实。此外,我们仔细设计批注程序不同阶段的UI,从而使批注者关注每个阶段最重要的方面。此外,我们的系统通过引入一个轻量而有效的机制来宣传批注结果,也大大减少了互动的数量。实验结果表明,我们的方法可以显著地加快程序并改进批注质量。