Unos: Unified Unsupervised Optical-Flow And Stereo-Depth Estimation By Watching Videos

2019 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2019)(2019)

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摘要
In this paper, we propose UnOS, an unified system for unsupervisedopticalflow and stereo depth estimation using convolutional neural network (CNN) by taking advantages of theirinherentgeometricalconsistency based on the rigidscene assumption [31]. UnOS significantly outperforms other state-of-the-art(SOTA) unsupervisedapproachesthat treatedthe two tasks independently. Specifically, given two consecutive stereo image pairsfrom a video, UnOS estimates per-pixel stereo depth images, camera ego-motion and opticalflow with three parallelCNNs. Based on these quantities, UnOS computes rigid optical flow and compares it againstthe opticalflow estimatedfrom the FlowNet, yielding pixels satisfying the rigid-sceneassumption. Then, we encourage geometricalconsistency between the two estimated flows within rigid regions, from which we derive a rigid-aware direct visual odometry (RDVO) module. We also propose rigid and occlusion-awareflow-consistency losses for the learning of UnOS. We evaluated our results on the popularKITTI datasetover 4 related tasks, i.e. stereo depth, opticalflow, visual odometry and motion segmentation.
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关键词
Low-level Vision,Deep Learning , Image and Video Synthesis, Motion and Tracking, Robotics + Driving
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