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SlotFormer: Unsupervised Visual Dynamics Simulation with Object-Centric Models

About

Understanding dynamics from visual observations is a challenging problem that requires disentangling individual objects from the scene and learning their interactions. While recent object-centric models can successfully decompose a scene into objects, modeling their dynamics effectively still remains a challenge. We address this problem by introducing SlotFormer -- a Transformer-based autoregressive model operating on learned object-centric representations. Given a video clip, our approach reasons over object features to model spatio-temporal relationships and predicts accurate future object states. In this paper, we successfully apply SlotFormer to perform video prediction on datasets with complex object interactions. Moreover, the unsupervised SlotFormer's dynamics model can be used to improve the performance on supervised downstream tasks, such as Visual Question Answering (VQA), and goal-conditioned planning. Compared to past works on dynamics modeling, our method achieves significantly better long-term synthesis of object dynamics, while retaining high quality visual generation. Besides, SlotFormer enables VQA models to reason about the future without object-level labels, even outperforming counterparts that use ground-truth annotations. Finally, we show its ability to serve as a world model for model-based planning, which is competitive with methods designed specifically for such tasks.

Ziyi Wu, Nikita Dvornik, Klaus Greff, Thomas Kipf, Animesh Garg• 2022

Related benchmarks

TaskDatasetResultRank
World Model PredictionMultiGrid
PSNR24.9
7
World Model PredictionStarpilot
PSNR19.8
7
World Model PredictionBigfish
PSNR19.6
7
World Model PredictionLeaper
PSNR21.4
7
World Model PredictionnuPlan
PSNR14
6
Factor-agent correspondenceMultiGrid
Disentanglement0.85
4
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