preprintJan 8, 2016Closed access

A Large Dataset to Train Convolutional Networks for Disparity, Optical Flow, and Scene Flow Estimation

NMNikolaus MayerEIEddy IlgDCDaniel CremersADAlexey DosovitskiyTBThomas Brox

Abstract

Recent work has shown that optical flow estimation can be formulated as a supervised learning task and can be suc-cessfully solved with convolutional networks. Training of the so-called FlowNet was enabled by a large synthetically generated dataset. The present paper extends the concept of optical flow estimation via convolutional networks to dis-parity and scene flow estimation. To this end, we propose three synthetic stereo video datasets with sufficient realism, variation, and size to successfully train large networks. Our datasets are the first large-scale datasets to enable training and evaluating scene flow methods. Besides the datasets, we present a convolutional network for real-time disparity…

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1,298
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Authors

5
  • NM
    Nikolaus MayerCorresponding
  • EI
    Eddy Ilg
  • DC
    Daniel Cremers
  • AD
    Alexey Dosovitskiy
  • TB
    Thomas Brox

Topics & keywords

Keywords
  • Computer science
  • Optical flow
  • Artificial intelligence
  • Convolutional neural network
  • Estimation
  • Flow (mathematics)
  • Variation (astronomy)
  • Task (project management)
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