14/06/2020

Flow2Stereo: Effective Self-Supervised Learning of Optical Flow and Stereo Matching

Pengpeng Liu, Irwin King, Michael R. Lyu, Jia Xu

Keywords: optical flow, stereo matching, self-supervised learning, unsupervised learning, geometric constraints, convolutional neural networks (cnns), motion, depth

Abstract: In this paper, we propose a unified method to jointly learn optical flow and stereo matching. Our first intuition is stereo matching can be modeled as a special case of optical flow, and we can leverage 3D geometry behind stereoscopic videos to guide the learning of these two forms of correspondences. We then enroll this knowledge into the state-of-the-art self-supervised learning framework, and train one single network to estimate both flow and stereo. Second, we unveil the bottlenecks in prior self-supervised learning approaches, and propose to create a new set of challenging proxy tasks to boost performance. These two insights yield a single model that achieves the highest accuracy among all existing unsupervised flow and stereo methods on KITTI 2012 and 2015 benchmarks. More remarkably, our self-supervised method even outperforms several state-of-the-art fully supervised methods, including PWC-Net and FlowNet2 on KITTI 2012.

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