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Autori principali: Iyer, Hari, Macwan, Neel, Hude, Atharva Jitendra, Jeong, Heejin, Guo, Shenghan
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.14097
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author Iyer, Hari
Macwan, Neel
Hude, Atharva Jitendra
Jeong, Heejin
Guo, Shenghan
author_facet Iyer, Hari
Macwan, Neel
Hude, Atharva Jitendra
Jeong, Heejin
Guo, Shenghan
contents Human motion simulation (HMS) supports cost-effective evaluation of worker behavior, safety, and productivity in industrial tasks. However, existing methods often suffer from low motion fidelity. This study introduces Generative-AI-Enabled HMS (G-AI-HMS), which integrates text-to-text and text-to-motion models to enhance simulation quality for physical tasks. G-AI-HMS tackles two key challenges: (1) translating task descriptions into motion-aware language using Large Language Models aligned with MotionGPT's training vocabulary, and (2) validating AI-enhanced motions against real human movements using computer vision. Posture estimation algorithms are applied to real-time videos to extract joint landmarks, and motion similarity metrics are used to compare them with AI-enhanced sequences. In a case study involving eight tasks, the AI-enhanced motions showed lower error than human created descriptions in most scenarios, performing better in six tasks based on spatial accuracy, four tasks based on alignment after pose normalization, and seven tasks based on overall temporal similarity. Statistical analysis showed that AI-enhanced prompts significantly (p $<$ 0.0001) reduced joint error and temporal misalignment while retaining comparable posture accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2507_14097
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Generative AI-Driven High-Fidelity Human Motion Simulation
Iyer, Hari
Macwan, Neel
Hude, Atharva Jitendra
Jeong, Heejin
Guo, Shenghan
Artificial Intelligence
Computer Vision and Pattern Recognition
Human motion simulation (HMS) supports cost-effective evaluation of worker behavior, safety, and productivity in industrial tasks. However, existing methods often suffer from low motion fidelity. This study introduces Generative-AI-Enabled HMS (G-AI-HMS), which integrates text-to-text and text-to-motion models to enhance simulation quality for physical tasks. G-AI-HMS tackles two key challenges: (1) translating task descriptions into motion-aware language using Large Language Models aligned with MotionGPT's training vocabulary, and (2) validating AI-enhanced motions against real human movements using computer vision. Posture estimation algorithms are applied to real-time videos to extract joint landmarks, and motion similarity metrics are used to compare them with AI-enhanced sequences. In a case study involving eight tasks, the AI-enhanced motions showed lower error than human created descriptions in most scenarios, performing better in six tasks based on spatial accuracy, four tasks based on alignment after pose normalization, and seven tasks based on overall temporal similarity. Statistical analysis showed that AI-enhanced prompts significantly (p $<$ 0.0001) reduced joint error and temporal misalignment while retaining comparable posture accuracy.
title Generative AI-Driven High-Fidelity Human Motion Simulation
topic Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.14097