Learning Monocular Depth in Dynamic Scenes via Instance-Aware Projection Consistency
Issued Date
2021-02-05
Citation
Lee, Seokju. (2021-02-05). Learning Monocular Depth in Dynamic Scenes via Instance-Aware Projection Consistency. AAAI Conference on Artificial Intelligence, 1863–1872. doi: 10.1609/aaai.v35i3.16281
Type
Conference Paper
ISBN
9781577358664
ISSN
2374-3468
Abstract
We present an end-to-end joint training framework that explicitly models 6-DoF motion of multiple dynamic objects, ego-motion, and depth in a monocular camera setup without supervision. Our technical contributions are three-fold. First, we highlight the fundamental difference between inverse and forward projection while modeling the individual motion of each rigid object, and propose a geometrically correct projection pipeline using a neural forward projection module. Second, we design a unified instance-aware photometric and geometric consistency loss that holistically imposes self-supervisory signals for every background and object region. Lastly, we introduce a general-purpose auto-annotation scheme using any off-the-shelf instance segmentation and optical flow models to produce video instance segmentation maps that will be utilized as input to our training pipeline. These proposed elements are validated in a detailed ablation study. Through extensive experiments conducted on the KITTI and Cityscapes dataset, our framework is shown to outperform the state-of-the-art depth and motion estimation methods. Our code, dataset, and models are publicly available.