用于激光雷达点云自监督预训练的掩膜自编码器

Georg Hess, Johan Jaxing, Elias Svensson, David Hagerman, Christoffer Petersson, Lennart Svensson
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引用次数: 17

摘要

掩码自动编码已经成为文本、图像和最近的点云Transformer模型的成功预训练范例。原始汽车数据集是自我监督预训练的合适候选者,因为与3D对象检测(OD)等任务的注释相比,它们通常收集成本较低。然而,针对点云的掩蔽自编码器的开发仅仅集中在合成和室内数据上。因此,现有的方法将其表示和模型定制为具有均匀点密度的小而密集的点云。在这项工作中,我们研究了汽车环境中点云的掩模自动编码,这些点云是稀疏的,并且在同一场景中,点密度在不同的物体之间会有很大的变化。为此,我们提出了voxel - mae,这是一种简单的屏蔽自动编码预训练方案,用于体素表示。我们对基于变形金刚的3D物体检测器的主干进行了预训练,以重建蒙面体素,并区分空体素和非空体素。在具有挑战性的nuScenes数据集上,我们的方法将3D OD性能提高了1.75个mAP点和1.05个NDS。此外,我们表明,通过使用Voxel-MAE进行预训练,我们只需要40%的注释数据就可以优于随机初始化的等效数据。代码可从https://github.com/georghess/voxel-mae获得。
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Masked Autoencoder for Self-Supervised Pre-training on Lidar Point Clouds
Masked autoencoding has become a successful pretraining paradigm for Transformer models for text, images, and, recently, point clouds. Raw automotive datasets are suitable candidates for self-supervised pre-training as they gener-ally are cheap to collect compared to annotations for tasks like 3D object detection (OD). However, the development of masked autoencoders for point clouds has focused solely on synthetic and indoor data. Consequently, existing meth-ods have tailored their representations and models toward small and dense point clouds with homogeneous point den-sities. In this work, we study masked autoencoding for point clouds in an automotive setting, which are sparse and for which the point density can vary drastically among ob-jects in the same scene. To this end, we propose Voxel-MAE, a simple masked autoencoding pre-training scheme designed for voxel representations. We pre-train the back-bone of a Transformer-based 3D object detector to reconstruct masked voxels and to distinguish between empty and non-empty voxels. Our method improves the 3D OD performance by 1.75 mAP points and 1.05 NDS on the challenging nuScenes dataset. Further, we show that by pre-training with Voxel-MAE, we require only 40% of the annotated data to outperform a randomly initialized equivalent. Code is available at https://github.com/georghess/voxel-mae.
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