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Main Authors: Habib, Mohammed Ayman, Petruzzelli, Aldo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.14411
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author Habib, Mohammed Ayman
Petruzzelli, Aldo
author_facet Habib, Mohammed Ayman
Petruzzelli, Aldo
contents Omnia presents a synthetic data driven pipeline to accelerate the training, validation, and deployment readiness of militarized humanoids. The approach converts first-person spatial observations captured from point-of-view recordings, smart glasses, augmented reality headsets, and spatial browsing workflows into scalable, mission-specific synthetic datasets for humanoid autonomy. By generating large volumes of high-fidelity simulated scenarios and pairing them with automated labeling and model training, the pipeline enables rapid iteration on perception, navigation, and decision-making capabilities without the cost, risk, or time constraints of extensive field trials. The resulting datasets can be tuned quickly for new operational environments and threat conditions, supporting both baseline humanoid performance and advanced subsystems such as multimodal sensing, counter-detection survivability, and CBRNE-relevant reconnaissance behaviors. This work targets faster development cycles and improved robustness in complex, contested settings by exposing humanoid systems to broad scenario diversity early in the development process.
format Preprint
id arxiv_https___arxiv_org_abs_2512_14411
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Synthetic Data Pipelines for Adaptive, Mission-Ready Militarized Humanoids
Habib, Mohammed Ayman
Petruzzelli, Aldo
Robotics
Omnia presents a synthetic data driven pipeline to accelerate the training, validation, and deployment readiness of militarized humanoids. The approach converts first-person spatial observations captured from point-of-view recordings, smart glasses, augmented reality headsets, and spatial browsing workflows into scalable, mission-specific synthetic datasets for humanoid autonomy. By generating large volumes of high-fidelity simulated scenarios and pairing them with automated labeling and model training, the pipeline enables rapid iteration on perception, navigation, and decision-making capabilities without the cost, risk, or time constraints of extensive field trials. The resulting datasets can be tuned quickly for new operational environments and threat conditions, supporting both baseline humanoid performance and advanced subsystems such as multimodal sensing, counter-detection survivability, and CBRNE-relevant reconnaissance behaviors. This work targets faster development cycles and improved robustness in complex, contested settings by exposing humanoid systems to broad scenario diversity early in the development process.
title Synthetic Data Pipelines for Adaptive, Mission-Ready Militarized Humanoids
topic Robotics
url https://arxiv.org/abs/2512.14411