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Papers/Implicit Stacked Autoregressive Model for Video Prediction

Implicit Stacked Autoregressive Model for Video Prediction

Minseok Seo, Hakjin Lee, Doyi Kim, Junghoon Seo

2023-03-14Video PredictionWeather ForecastingPrediction
PaperPDFCode(official)

Abstract

Future frame prediction has been approached through two primary methods: autoregressive and non-autoregressive. Autoregressive methods rely on the Markov assumption and can achieve high accuracy in the early stages of prediction when errors are not yet accumulated. However, their performance tends to decline as the number of time steps increases. In contrast, non-autoregressive methods can achieve relatively high performance but lack correlation between predictions for each time step. In this paper, we propose an Implicit Stacked Autoregressive Model for Video Prediction (IAM4VP), which is an implicit video prediction model that applies a stacked autoregressive method. Like non-autoregressive methods, stacked autoregressive methods use the same observed frame to estimate all future frames. However, they use their own predictions as input, similar to autoregressive methods. As the number of time steps increases, predictions are sequentially stacked in the queue. To evaluate the effectiveness of IAM4VP, we conducted experiments on three common future frame prediction benchmark datasets and weather\&climate prediction benchmark datasets. The results demonstrate that our proposed model achieves state-of-the-art performance.

Results

TaskDatasetMetricValueModel
VideoMoving MNISTMAE49.2IAM4VPx5
VideoMoving MNISTMSE15.3IAM4VPx5
VideoMoving MNISTSSIM0.966IAM4VPx5
VideoHuman3.6MMAE1120IAM4VP
VideoHuman3.6MMSE126IAM4VP
VideoHuman3.6MSSIM0.942IAM4VP
Video PredictionMoving MNISTMAE49.2IAM4VPx5
Video PredictionMoving MNISTMSE15.3IAM4VPx5
Video PredictionMoving MNISTSSIM0.966IAM4VPx5
Video PredictionHuman3.6MMAE1120IAM4VP
Video PredictionHuman3.6MMSE126IAM4VP
Video PredictionHuman3.6MSSIM0.942IAM4VP
Weather ForecastingSEVIRMSE2.9371IAM4VP
Weather ForecastingSEVIRmCSI0.4607IAM4VP

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