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Lecture 10 Oct 2023

We present a framework for object-centric video prediction, i.e., parsing a video sequence into objects, and modeling their dynamics and interactions in order to predict the future object states from which video frames are rendered. To facilitate the learning of meaningful spatio-temporal object representations and forecasting of their states, we propose two novel object-centric video prediction (OCVP) transformer modules, which decouple the processing of temporal dynamics and object interactions. We show how OCVP predictors outperform object-agnostic video prediction models on two different datasets. Furthermore, we observe that OCVP modules learn consistent and interpretable object representations. Animations and code to reproduce our results can be found in our project website.

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