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STFlow: Self-Taught Optical Flow Estimation Using Pseudo Labels

Zhe Ren, Wenhan Luo, Junchi Yan, Wenlong Liao, Xiaokang Yang, Alan Yuille, Hongyuan Zha

2020IEEE Transactions on Image Processing23 citationsDOI

Abstract

The Deep learning of optical flow has been an active area for its empirical success. For the difficulty of obtaining accurate dense correspondence labels, unsupervised learning of optical flow has drawn more and more attention, while the accuracy is still far from satisfaction. By holding the philosophy that better estimation models can be trained with betterapproximated labels, which in turn can be obtained from better estimation models, we propose a self-taught learning framework to continually improve the accuracy using self-generated pseudo labels. The estimated optical flow is first filtered by bidirectional flow consistency validation and occlusion-aware dense labels are then generated by edge-aware interpolation from selected sparse matches. Moreover, by combining reconstruction loss with regression loss on the generated pseudo labels, the performance is further improved. The experimental results demonstrate that our models achieve state-of-the-art results among unsupervised methods on the public KITTI, MPI-Sintel and Flying Chairs datasets.

Topics & Concepts

Computer scienceOptical flowArtificial intelligenceConsistency (knowledge bases)Interpolation (computer graphics)Enhanced Data Rates for GSM EvolutionUnsupervised learningMachine learningPattern recognition (psychology)Deep learningFlow (mathematics)Computer visionImage (mathematics)MathematicsGeometryAdvanced Vision and ImagingImage Enhancement TechniquesAdvanced Image Processing Techniques
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