CrevNet: Conditionally Reversible Video Prediction
Abstract
CrevNet, a Conditionally Reversible Network, uses reversible architectures for video prediction to ensure no information loss, lower memory usage, and higher computational efficiency.
Applying resolution-preserving blocks is a common practice to maximize information preservation in video prediction, yet their high memory consumption greatly limits their application scenarios. We propose CrevNet, a Conditionally Reversible Network that uses reversible architectures to build a bijective two-way autoencoder and its complementary recurrent predictor. Our model enjoys the theoretically guaranteed property of no information loss during the feature extraction, much lower memory consumption and computational efficiency.
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