Papers
arxiv:2412.14294

TRecViT: A Recurrent Video Transformer

Published on Dec 18
· Submitted by artemZholus on Dec 23
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Abstract

We propose a novel block for video modelling. It relies on a time-space-channel factorisation with dedicated blocks for each dimension: gated linear recurrent units (LRUs) perform information mixing over time, self-attention layers perform mixing over space, and MLPs over channels. The resulting architecture TRecViT performs well on sparse and dense tasks, trained in supervised or self-supervised regimes. Notably, our model is causal and outperforms or is on par with a pure attention model ViViT-L on large scale video datasets (SSv2, Kinetics400), while having 3times less parameters, 12times smaller memory footprint, and 5times lower FLOPs count. Code and checkpoints will be made available online at https://github.com/google-deepmind/trecvit.

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Paper submitter

A new video architecture that combines Vision Transformer and State-Space-Model (SSM).

The space-time architecture is ingenious. Awesome work. 😍

I wonder if a similar-ish architecture could be used to stitch together SLM's, as an alternative to naive chaining. 🤔

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