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FlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks

Advances end-to-end deep optical flow estimation via training-data scheduling, a stacked warping architecture, and a small-displacement subnetwork.

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FlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks

By Eddy Ilg, N. Mayer, Tonmoy Saikia et al.Computer Vision and Pattern Recognition
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FlowNet 2.0 advances the concept of end-to-end learning of optical flow, building on the original FlowNet, which demonstrated that optical flow estimation could be cast as a learning problem but still could not match traditional variational methods in quality, particularly on small displacements and real-world data. The paper attributes its large improvements in quality and speed to three major contributions: focusing on the schedule of presenting training data, which proves very important; developing a stacked architecture that includes warping of the second image with intermediate optical flow; and introducing a subnetwork that specializes in small motions to better handle small displacements.

The resulting system is only marginally slower than the original FlowNet but decreases the estimation error by more than 50%, performing on par with state-of-the-art methods while running at interactive frame rates. The authors also present faster variants that allow optical flow computation at up to 140fps while matching the accuracy of the original FlowNet. This showed that carefully engineered deep networks could finally compete with, and match, traditional optical flow methods in both accuracy and speed.

Abstract

FlowNet showed optical flow could be cast as a learning problem, but traditional methods still defined state-of-the-art quality, especially on small displacements and real-world data. FlowNet 2.0 makes end-to-end learned optical flow work well through three contributions: emphasizing the schedule of presenting training data, a stacked architecture that warps the second image with intermediate flow, and a subnetwork specializing in small motions. It reduces estimation error by more than 50% while running at interactive frame rates, with variants up to 140fps.

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optical flowdeep learningend-to-end learningstacked networksreal-time estimation
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