Publication | Closed Access
Unsupervised Estimation of Monocular Depth and VO in Dynamic Environments via Hybrid Masks
49
Citations
38
References
2021
Year
EngineeringMachine LearningScale InconsistencyDepth PredictionDepth MapDynamic Environments3D Computer VisionImage AnalysisRobot LearningComputational GeometryMachine VisionCover MaskDeep LearningHybrid MasksComputer Vision3D VisionComputer Stereo VisionMonocular DepthMulti-view GeometryStereoscopic Processing
Deep learning-based methods mymargin have achieved remarkable performance in 3-D sensing since they perceive environments in a biologically inspired manner. Nevertheless, the existing approaches trained by monocular sequences are still prone to fail in dynamic environments. In this work, we mitigate the negative influence of dynamic environments on the joint estimation of depth and visual odometry (VO) through hybrid masks. Since both the VO estimation and view reconstruction process in the joint estimation framework is vulnerable to dynamic environments, we propose the cover mask and the filter mask to alleviate the adverse effects, respectively. As the depth and VO estimation are tightly coupled during training, the improved VO estimation promotes depth estimation as well. Besides, a depth-pose consistency loss is proposed to overcome the scale inconsistency between different training samples of monocular sequences. Experimental results show that both our depth prediction and globally consistent VO estimation are state of the art when evaluated on the KITTI benchmark. We evaluate our depth prediction model on the Make3D dataset to prove the transferability of our method as well.
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