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bryanyzhu / deepOF

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TensorFlow implementation for "Guided Optical Flow Learning"

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deepOF

TensorFlow implementation for "Guided Optical Flow Learning". You can refer to paper for more details at Openreview or Arxiv.

The code is ready to run, but the accuracy is a little lower than both Caffe and Pytorch implementation.

Proceed if you really want to use TensorFlow.

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