FlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks
IEEE Conference on Computer Vision and Pattern Recognition (CVPR), 2017
Abstract: The FlowNet demonstrated that optical flow estimation can be cast as a learning problem. However, the state of the art with regard to the quality of the flow has still been defined by traditional methods. Particularly on small displacements and real-world data, FlowNet cannot compete with variational methods. In this paper, we advance the concept of end-to-end learning of optical flow and make it work really well.
The large improvements in quality and speed are caused by three major contributions: first, we focus on the training data and show that the schedule of presenting data during training is very important. Second, we develop a stacked architecture that includes warping of the second image with intermediate optical flow.
Third, we elaborate on small displacements by introducing a sub-network specializing on small motions.
FlowNet 2.0 is only marginally slower than the original FlowNet but decreases the estimation error by more than 50%.
It performs on par with state-of-the-art methods, while running at interactive frame rates.
Moreover, we present faster variants that allow optical flow computation at up to 140fps with accuracy matching the original FlowNet.
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@InProceedings{IMSKDB17, author = "E. Ilg and N. Mayer and T. Saikia and M. Keuper and A. Dosovitskiy and T. Brox", title = "FlowNet 2.0: Evolution of Optical Flow Estimation with Deep Networks", booktitle = "IEEE Conference on Computer Vision and Pattern Recognition (CVPR)", month = " ", year = "2017", url = "http://lmbweb.informatik.uni-freiburg.de/Publications/2017/IMSKDB17" }