Paper ID: 2407.09537

ViPro: Enabling and Controlling Video Prediction for Complex Dynamical Scenarios using Procedural Knowledge

Patrick Takenaka, Johannes Maucher, Marco F. Huber

We propose a novel architecture design for video prediction in order to utilize procedural domain knowledge directly as part of the computational graph of data-driven models. On the basis of new challenging scenarios we show that state-of-the-art video predictors struggle in complex dynamical settings, and highlight that the introduction of prior process knowledge makes their learning problem feasible. Our approach results in the learning of a symbolically addressable interface between data-driven aspects in the model and our dedicated procedural knowledge module, which we utilize in downstream control tasks.

Submitted: Jun 26, 2024