For monocular depth estimation, acquiring ground truths for real data is not easy, and thus domain adaptation methods are commonly adopted using the supervised synthetic data. However, this may still incur a large domain gap due to the lack of supervision from the real data. In this paper, we develop a domain adaptation framework via generating reliable pseudo ground truths of depth from real data to provide direct supervisions. Specifically, we propose two mechanisms for pseudo-labeling: 1) 2D-based pseudo-labels via measuring the consistency of depth predictions when images are with the same content but different styles; 2) 3D-aware pseudo-labels via a point cloud completion network that learns to complete the depth values in the 3D space, thus providing more structural information in a scene to refine and generate more reliable pseudo-labels. In experiments, we show that our pseudo-labeling methods improve depth estimation in various settings, including the usage of stereo pairs during training. Furthermore, the proposed method performs favorably against several state-of-the-art unsupervised domain adaptation approaches in real-world datasets.
翻译:对于单眼深度估计,为真实数据获取地面真相并非易事,因此通常使用受监督的合成数据采用领域适应方法。然而,由于缺乏对真实数据的监管,这仍可能造成巨大的领域差距。在本文中,我们开发了一个领域适应框架,从真实数据中产生可靠的假的深度地面真相,以提供直接监督。具体地说,我们提出了两个假标签机制:1) 2D基伪标签,以测量在图像内容相同但风格不同时对深度预测的一致性;2) 3D伪标签,通过点云完成网络,学习如何完成3D空间的深度值,从而在现场提供更多结构性信息,以完善和生成更可靠的伪标签。在实验中,我们表明我们的伪标签方法改善了各种环境的深度估计,包括培训中使用立体配对。此外,拟议方法优于现实世界数据集中若干最先进的、不受监督的域域适应方法。