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MotionRNN: A Flexible Model for Video Prediction with Spacetime-Varying Motions

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This paper tackles video prediction from a new dimension of predicting spacetime-varying motions that are incessantly changing across both space and time. Prior methods mainly capture the temporal state transitions but overlook the complex spatiotemporal variations of the motion itself, making them difficult to adapt to ever-changing motions. We observe that physical world motions can be decomposed into transient variation and motion trend, while the latter can be regarded as the accumulation of previous motions. Thus, simultaneously capturing the transient variation and the motion trend is the key to make spacetime-varying motions more predictable. Based on these observations, we propose the MotionRNN framework, which can capture the complex variations within motions and adapt to spacetime-varying scenarios. MotionRNN has two main contributions. The first is that we design the MotionGRU unit, which can model the transient variation and motion trend in a unified way. The second is that we apply the MotionGRU to RNN-based predictive models and indicate a new flexible video prediction architecture with a Motion Highway that can significantly improve the ability to predict changeable motions and avoid motion vanishing for stacked multiple-layer predictive models. With high flexibility, this framework can adapt to a series of models for deterministic spatiotemporal prediction. Our MotionRNN can yield significant improvements on three challenging benchmarks for video prediction with spacetime-varying motions.

Haixu Wu, Zhiyu Yao, Jianmin Wang, Mingsheng Long• 2021

Related benchmarks

TaskDatasetResultRank
Human Motion PredictionHuman3.6M (test)--
85
Video PredictionUCF Sports t+1 (test)
PSNR27.67
32
Video PredictionTaxiBJ (test)
MAE16.0009
23
Video PredictionUCF Sports 4 frames -> 6 frames
PSNR27.67
22
Video PredictionHuman3.6M 4 frames -> 4 frames
PSNR32.2
20
Precipitation forecastingRadar Echo
CSI (Threshold 30)67.8
14
Video PredictionCIKM 2017
MSE27.2091
14
Video PredictionShanghai 2020
MSE4.5867
14
Video PredictionV-MNIST
MSE25.1
10
Video PredictionWeatherBench
MSE1.2607
10
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