Improved Event-Based Dense Depth Estimation Via Optical Flow Compensation
Dianxi Shi, Luoxi Jing, Ruihao Li, Zhe Liu, Huachi Xu, Lin Wang, Yi Zhang
Abstract
Event cameras have the potential to overcome the limitations of classical computer vision in real-world applica- tions. Depth estimation is a crucial step for high-level robotics tasks and has attracted much attention from the community. In this paper, we propose an event-based dense depth estimation architecture, Mixed-EF2DNet, which firstly predicts inter-grid optical flow to compensate for lost temporal information, and then estimates multiple contextual depth maps that are fused to generate a robust depth estimation map. To supervise the network training, we further design a smoothing loss function used to smooth local depth estimates and facilitate estimating reasonable depth for pixels without events. In addition, we introduce SE-resblocks in the depth network to enhance the network representation by selecting feature channels. Experi- mental evaluations on both real-world and synthetic datasets show that our method performs better in terms of accuracy when compared to state-of-the-art algorithms, especially in scene detail estimation. Besides, our method demonstrates excellent generalization in cross-dataset tasks.