Semi-supervised Learning (SSL) has received increasing attention in autonomous driving to reduce the enormous burden of 3D annotation. In this paper, we propose UpCycling, a novel SSL framework for 3D object detection with zero additional raw-level point cloud: learning from unlabeled de-identified intermediate features (i.e., smashed data) to preserve privacy. Since these intermediate features are naturally produced by the inference pipeline, no additional computation is required on autonomous vehicles. However, generating effective consistency loss for unlabeled feature-level scene turns out to be a critical challenge. The latest SSL frameworks for 3D object detection that enforce consistency regularization between different augmentations of an unlabeled raw-point scene become detrimental when applied to intermediate features. To solve the problem, we introduce a novel combination of hybrid pseudo labels and feature-level Ground Truth sampling (F-GT), which safely augments unlabeled multi-type 3D scene features and provides high-quality supervision. We implement UpCycling on two representative 3D object detection models: SECOND-IoU and PV-RCNN. Experiments on widely-used datasets (Waymo, KITTI, and Lyft) verify that UpCycling outperforms other augmentation methods applied at the feature level. In addition, while preserving privacy, UpCycling performs better or comparably to the state-of-the-art methods that utilize raw-level unlabeled data in both domain adaptation and partial-label scenarios.
翻译:半监督的学习(SSL)在自主驱动中日益受到越来越多的关注,以降低3D注释的巨大负担。在本文中,我们提议 UpCycling,这是一个用于3D对象探测的新型SSL框架,使用零额外的原始点云:学习未贴标签的分辨中间特征(即被粉碎的数据)来保护隐私。由于这些中间特征是自然由推断管道生成的,因此不需要对自主车辆进行额外的计算。然而,对未贴标签的地物级场景造成有效的一致性损失是一个严峻的挑战。3D对象检测的最新SSL框架,在未贴标签的原始点场景的不同增强之间实施部分的标准化,在应用中间点时会变得有害。为了解决问题,我们引入了混合假标签和地平级地面真相取样(F-GT)的新组合,这安全地增加了未贴标签的多型三D场景特征,并提供高质量的监督。我们在两个具有代表性的3D对象检测模型上安装了Upi-IOU和 PV-RCNNNE。 实验在广泛应用的域域级上,在常规操作中,在使用其他数据级上进行更精确化的方法中,在运行中,在使用其他方法上进行更精确的升级。</s>