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arxiv: 2501.10562 · v1 · pith:EGK3W72Mnew · submitted 2025-01-17 · 💻 cs.CV

On the Benefits of Instance Decomposition in Video Prediction Models

classification 💻 cs.CV
keywords predictionscenevideodecompositiondynamicmodelsobjectstypically
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Video prediction is a crucial task for intelligent agents such as robots and autonomous vehicles, since it enables them to anticipate and act early on time-critical incidents. State-of-the-art video prediction methods typically model the dynamics of a scene jointly and implicitly, without any explicit decomposition into separate objects. This is challenging and potentially sub-optimal, as every object in a dynamic scene has their own pattern of movement, typically somewhat independent of others. In this paper, we investigate the benefit of explicitly modeling the objects in a dynamic scene separately within the context of latent-transformer video prediction models. We conduct detailed and carefully-controlled experiments on both synthetic and real-world datasets; our results show that decomposing a dynamic scene leads to higher quality predictions compared with models of a similar capacity that lack such decomposition.

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