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Action-GPT: Leveraging Large-scale Language Models for Improved and Generalized Action Generation

Sai Shashank Kalakonda, Shubh Maheshwari, Ravi Kiran Sarvadevabhatla

202347 citationsDOI

Abstract

We introduce Action-GPT, a plug-and-play framework for incorporating Large Language Models (LLMs) into text-based action generation models. Action phrases in current motion capture datasets contain minimal and to-the-point information. By carefully crafting prompts for LLMs, we generate richer and fine-grained descriptions of the action. We show that utilizing these detailed descriptions instead of the original action phrases leads to better alignment of text and motion spaces. We introduce a generic approach compatible with stochastic (e.g. VAE-based) and deterministic (e.g. MotionCLIP) text-to-motion models. In addition, the approach enables multiple text descriptions to be utilized. Our experiments show (i) noticeable qualitative and quantitative improvement in the quality of synthesized motions, (ii) benefits of utilizing multiple LLM-generated descriptions, (iii) suitability of the prompt function, and (iv) zero-shot generation capabilities of the proposed approach. Code and pretrained models are available at https://actiongpt.github.io.

Topics & Concepts

Computer scienceAction (physics)Motion (physics)Code (set theory)Point (geometry)Language modelFunction (biology)Scale (ratio)Artificial intelligenceQuality (philosophy)Natural language processingProgramming languageMathematicsBiologyEvolutionary biologyPhysicsQuantum mechanicsGeometryEpistemologySet (abstract data type)PhilosophyHuman Motion and AnimationHuman Pose and Action RecognitionVideo Analysis and Summarization