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Improved Event-Based Dense Depth Estimation Via Optical Flow Compensation

Dianxi Shi, Luoxi Jing, Ruihao Li, Zhe Liu, Huachi Xu, Lin Wang, Yi Zhang

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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.

Index terms

Deep Learning for Visual Perception Semantic Scene Understanding