Semantic segmentation of LiDAR point clouds is an important task in autonomous driving. However, training deep models via conventional supervised methods requires large datasets which are costly to label. It is critical to have label-efficient segmentation approaches to scale up the model to new operational domains or to improve performance on rare cases. While most prior works focus on indoor scenes, we are one of the first to propose a label-efficient semantic segmentation pipeline for outdoor scenes with LiDAR point clouds. Our method co-designs an efficient labeling process with semi/weakly supervised learning and is applicable to nearly any 3D semantic segmentation backbones. Specifically, we leverage geometry patterns in outdoor scenes to have a heuristic pre-segmentation to reduce the manual labeling and jointly design the learning targets with the labeling process. In the learning step, we leverage prototype learning to get more descriptive point embeddings and use multi-scan distillation to exploit richer semantics from temporally aggregated point clouds to boost the performance of single-scan models. Evaluated on the SemanticKITTI and the nuScenes datasets, we show that our proposed method outperforms existing label-efficient methods. With extremely limited human annotations (e.g., 0.1% point labels), our proposed method is even highly competitive compared to the fully supervised counterpart with 100% labels.
翻译:LiDAR 点云的语义分解是自主驱动的一项重要任务。 但是, 通过常规监督方法对深层次模型进行培训需要花费昂贵的标签标签。 至关重要的是, 要使用标签高效的分解方法将模型推广到新的操作领域, 或提高罕见案例的性能。 虽然大多数先前的工作都集中在室内场景上, 我们是最先提议用LIDAR 点云为户外场景配置一个标签高效的语义分解管道。 我们的方法是共同设计一个高效的标签过程, 配有半/ 薄弱监督的学习, 并适用于几乎所有的 3D 语义分解脊椎。 具体地说, 我们利用户外场的几何测地模式来使用超静态的预分解方法将模型推广到新的操作领域, 并联合设计与标签过程一起的学习目标。 在学习过程中, 我们利用原型学习来获得更多的描述点嵌入点, 并使用多语义分解来利用从时间集点云中更富的语义语义, 来提升单扫描模型的性能。, 甚至用Smantiticle ketticle del- laction ex