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Hauptverfasser: Kanta, Sandeep, Tavassoli, Mehrdad, Chirkuri, Varun Teja, Kumar, Venkata Akhil, Punati, Santhi Bharath, Damacharla, Praveen, Katyara, Sunny
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2508.11960
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author Kanta, Sandeep
Tavassoli, Mehrdad
Chirkuri, Varun Teja
Kumar, Venkata Akhil
Punati, Santhi Bharath
Damacharla, Praveen
Katyara, Sunny
author_facet Kanta, Sandeep
Tavassoli, Mehrdad
Chirkuri, Varun Teja
Kumar, Venkata Akhil
Punati, Santhi Bharath
Damacharla, Praveen
Katyara, Sunny
contents Agile human-centric manufacturing increasingly requires resilient robotic solutions that are capable of safe and productive interactions within unstructured environments of modern factories. While multi-modal sensor fusion provides comprehensive situational awareness yet robots must also contextualize their reasoning to achieve deep semantic understanding of complex scenes. Foundation model particularly Vision-Language-Action (VLA) models have emerged as promising approach on integrating diverse perceptual modalities and spatio-temporal reasoning abilities to ground physical actions to realize General Physical Intelligence (GPI) across various robotic embodiments. Although GPI has been conceptually discussed in literature but its pivotal role and practical deployment in agile manufacturing remain underexplored. To address this gap, this practical review systematically surveys recent advances in VLA models through the lens of GPI by offering comparative analysis of leading implementations and evaluating their industrial readiness via structured ablation study. The state of the art is organized into six thematic pillars including multisensory representation learning, sim2real transfer, planning and control, uncertainty and safety measures and benchmarking. Finally, the review highlights open challenges and future directions for integrating GPI into industrial ecosystems to align with the vision of Industry 5.0 for intelligent, adaptive and collaborative manufacturing ecosystem.
format Preprint
id arxiv_https___arxiv_org_abs_2508_11960
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Human Centric General Physical Intelligence for Agile Manufacturing Automation
Kanta, Sandeep
Tavassoli, Mehrdad
Chirkuri, Varun Teja
Kumar, Venkata Akhil
Punati, Santhi Bharath
Damacharla, Praveen
Katyara, Sunny
Robotics
Agile human-centric manufacturing increasingly requires resilient robotic solutions that are capable of safe and productive interactions within unstructured environments of modern factories. While multi-modal sensor fusion provides comprehensive situational awareness yet robots must also contextualize their reasoning to achieve deep semantic understanding of complex scenes. Foundation model particularly Vision-Language-Action (VLA) models have emerged as promising approach on integrating diverse perceptual modalities and spatio-temporal reasoning abilities to ground physical actions to realize General Physical Intelligence (GPI) across various robotic embodiments. Although GPI has been conceptually discussed in literature but its pivotal role and practical deployment in agile manufacturing remain underexplored. To address this gap, this practical review systematically surveys recent advances in VLA models through the lens of GPI by offering comparative analysis of leading implementations and evaluating their industrial readiness via structured ablation study. The state of the art is organized into six thematic pillars including multisensory representation learning, sim2real transfer, planning and control, uncertainty and safety measures and benchmarking. Finally, the review highlights open challenges and future directions for integrating GPI into industrial ecosystems to align with the vision of Industry 5.0 for intelligent, adaptive and collaborative manufacturing ecosystem.
title Human Centric General Physical Intelligence for Agile Manufacturing Automation
topic Robotics
url https://arxiv.org/abs/2508.11960