CVJan 1, 2025

Multimodal Large Models Are Effective Action Anticipators

arXiv:2501.00795v113 citationsh-index: 5Has CodeIEEE transactions on multimedia
Originality Incremental advance
AI Analysis

This work addresses the problem of anticipating actions in videos for computer vision applications, presenting an incremental approach by adapting LLMs to a new multimodal task.

The paper tackles long-term action anticipation by proposing ActionLLM, a framework that treats video sequences as tokens and leverages Large Language Models (LLMs) to predict future actions, achieving superior results on benchmark datasets.

The task of long-term action anticipation demands solutions that can effectively model temporal dynamics over extended periods while deeply understanding the inherent semantics of actions. Traditional approaches, which primarily rely on recurrent units or Transformer layers to capture long-term dependencies, often fall short in addressing these challenges. Large Language Models (LLMs), with their robust sequential modeling capabilities and extensive commonsense knowledge, present new opportunities for long-term action anticipation. In this work, we introduce the ActionLLM framework, a novel approach that treats video sequences as successive tokens, leveraging LLMs to anticipate future actions. Our baseline model simplifies the LLM architecture by setting future tokens, incorporating an action tuning module, and reducing the textual decoder layer to a linear layer, enabling straightforward action prediction without the need for complex instructions or redundant descriptions. To further harness the commonsense reasoning of LLMs, we predict action categories for observed frames and use sequential textual clues to guide semantic understanding. In addition, we introduce a Cross-Modality Interaction Block, designed to explore the specificity within each modality and capture interactions between vision and textual modalities, thereby enhancing multimodal tuning. Extensive experiments on benchmark datasets demonstrate the superiority of the proposed ActionLLM framework, encouraging a promising direction to explore LLMs in the context of action anticipation. Code is available at https://github.com/2tianyao1/ActionLLM.git.

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