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Exploiting Semantic Information and Deep Matching for Optical Flow

About

We tackle the problem of estimating optical flow from a monocular camera in the context of autonomous driving. We build on the observation that the scene is typically composed of a static background, as well as a relatively small number of traffic participants which move rigidly in 3D. We propose to estimate the traffic participants using instance-level segmentation. For each traffic participant, we use the epipolar constraints that govern each independent motion for faster and more accurate estimation. Our second contribution is a new convolutional net that learns to perform flow matching, and is able to estimate the uncertainty of its matches. This is a core element of our flow estimation pipeline. We demonstrate the effectiveness of our approach in the challenging KITTI 2015 flow benchmark, and show that our approach outperforms published approaches by a large margin.

Min Bai, Wenjie Luo, Kaustav Kundu, Raquel Urtasun• 2016

Related benchmarks

TaskDatasetResultRank
Optical Flow EstimationKITTI 2015 (train)--
431
Optical FlowKITTI 2012 (train)
AEE2.3
115
Optical FlowKITTI 2015 (test)
Fl Error (All)11.01
95
Optical FlowKITTI-15 (test)
Fl-all11.01
85
Optical FlowKITTI 2012 (test)
EPE7.69
55
Optical Flow EstimationKITTI 2012 (test)--
41
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