Robust Monocular Epipolar Flow Estimation

Computer Vision and Pattern Recognition(2013)

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摘要
We consider the problem of computing optical flow in monocular video taken from a moving vehicle. In this setting, the vast majority of image flow is due to the vehicle's ego-motion. We propose to take advantage of this fact and estimate flow along the epipolar lines of the egomotion. Towards this goal, we derive a slanted-plane MRF model which explicitly reasons about the ordering of planes and their physical validity at junctions. Furthermore, we present a bottom-up grouping algorithm which produces over-segmentations that respect flow boundaries. We demonstrate the effectiveness of our approach in the challenging KITTI flow benchmark [11] achieving half the error of the best competing general flow algorithm and one third of the error of the best epipolar flow algorithm.
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关键词
estimation theory,image motion analysis,image sequences,video signal processing,KITTI flow benchmark,bottom-up grouping algorithm,epipolar flow algorithm,epipolar lines,flow boundary,general flow algorithm,image flow,monocular video,moving vehicle,optical flow,physical validity,robust monocular epipolar flow estimation,slanted-plane MRF model,vehicle egomotion,Autonomous driving,Optical flow
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