The vision community has started to build with the recently developed state space model, Mamba, as the new backbone for a range of tasks. This paper shows that Mamba's visual capability can be significantly enhanced through autoregressive pretraining, a direction not previously explored. Efficiency-wise, the autoregressive nature can well capitalize on the Mamba's unidirectional recurrent structure, enabling faster overall training speed compared to other training strategies like mask modeling. Performance-wise, autoregressive pretraining equips the Mamba architecture with markedly higher accuracy over its supervised-trained counterparts and, more importantly, successfully unlocks its scaling potential to large and even huge model sizes. For example, with autoregressive pretraining, a base-size Mamba attains 83.2% ImageNet accuracy, outperforming its supervised counterpart by 2.0%; our huge-size Mamba, the largest Vision Mamba to date, attains 85.0% ImageNet accuracy (85.5% when finetuned with $384\times384$ inputs), notably surpassing all other Mamba variants in vision. The code is available at \url{https://github.com/OliverRensu/ARM}.
Autoregressive Pretraining with Mamba in Vision
Autoregressive pretraining significantly enhances the visual capabilities and scaling potential of the Mamba state space model, improving ImageNet accuracy and overall training efficiency.
- Year
- 2024
- Venue
- arXiv 2024
- Authors
- 12
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2406.07537ARXIV-DEFAULT
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