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M$^3$GPT: An Advanced Multimodal, Multitask Framework for Motion Comprehension and Generation

M$^3$GPT, a multimodal multitask framework, uses discrete vector quantization and raw motion space modeling to integrate various motion signals, enabling unified motion comprehension and generation with zero-shot generalization capabilities.

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Year
2024
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arXiv 2024
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7
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arxiv.org/abs/2405.16273v5ARXIV-DEFAULT
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Abstract

This paper presents M^3GPT, an advanced Multimodal, Multitask framework for Motion comprehension and generation. M^3GPT operates on three fundamental principles. The first focuses on creating a unified representation space for various motion-relevant modalities. We employ discrete vector quantization for multimodal conditional signals, such as text, music and motion/dance, enabling seamless integration into a large language model (LLM) with a single vocabulary. The second involves modeling motion generation directly in the raw motion space. This strategy circumvents the information loss associated with a discrete tokenizer, resulting in more detailed and comprehensive motion generation. Third, M^3GPT learns to model the connections and synergies among various motion-relevant tasks. Text, the most familiar and well-understood modality for LLMs, is utilized as a bridge to establish connections between different motion tasks, facilitating mutual reinforcement. To our knowledge, M^3GPT is the first model capable of comprehending and generating motions based on multiple signals. Extensive experiments highlight M^3GPT's superior performance across various motion-relevant tasks and its powerful zero-shot generalization capabilities for extremely challenging tasks. Project page: https://github.com/luomingshuang/M3GPT.

Authors

7