CVJan 5

MagicFight: Personalized Martial Arts Combat Video Generation

arXiv:2601.02107v126 citationsh-index: 11Has CodeMM
Originality Incremental advance
AI Analysis

This work addresses a gap in interactive video content creation for applications like entertainment or training, though it is incremental as it adapts existing models to a new task.

The paper tackles the problem of generating personalized two-person martial arts combat videos, a previously uncharted domain, by introducing the MagicFight approach and a custom Unity-generated dataset, resulting in high-fidelity videos that maintain individual identities and coherent action sequences.

Amid the surge in generic text-to-video generation, the field of personalized human video generation has witnessed notable advancements, primarily concentrated on single-person scenarios. However, to our knowledge, the domain of two-person interactions, particularly in the context of martial arts combat, remains uncharted. We identify a significant gap: existing models for single-person dancing generation prove insufficient for capturing the subtleties and complexities of two engaged fighters, resulting in challenges such as identity confusion, anomalous limbs, and action mismatches. To address this, we introduce a pioneering new task, Personalized Martial Arts Combat Video Generation. Our approach, MagicFight, is specifically crafted to overcome these hurdles. Given this pioneering task, we face a lack of appropriate datasets. Thus, we generate a bespoke dataset using the game physics engine Unity, meticulously crafting a multitude of 3D characters, martial arts moves, and scenes designed to represent the diversity of combat. MagicFight refines and adapts existing models and strategies to generate high-fidelity two-person combat videos that maintain individual identities and ensure seamless, coherent action sequences, thereby laying the groundwork for future innovations in the realm of interactive video content creation. Website: https://MingfuYAN.github.io/MagicFight/ Dataset: https://huggingface.co/datasets/MingfuYAN/KungFu-Fiesta

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