Clean FrameClean FrameDenoised FrameDenoised FrameHigh Levelto Low LevelLow Levelto High LevelStyleTransferVideo GenerationFew-Shot Learning
–Neural Information Processing Systems
Instead of predicting discrete tokens, GPDiT autoregressively predicts future latent frames using a diffusion loss, enabling natural modeling of motion dynamics and semantic consistency across frames. This continuous autoregressive framework not only enhances generation quality but also endows the model with representation capabilities. Additionally, we introduce a lightweight causal attention variant and a parameter-free rotation-based time-conditioning mechanism, improving both the training and inference efficiency. Extensive experiments demonstrate that GPDiT achieves strong performance in video generation quality, video representation ability, and few-shot learning tasks, highlighting its potential as an effective framework for video modeling in continuous space.
Neural Information Processing Systems
Jun-22-2026, 17:06:43 GMT
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- Research Report
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- Information Technology > Artificial Intelligence
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- Information Technology > Artificial Intelligence