Towards achieving a high degree of situational awareness and multimodal interaction with AR and semantic AI in industrial applications

With its various available frameworks and possible devices, augmented reality is a proven useful tool in various industrial processes such as maintenance, repairing, training, reconfiguration, and even monitoring tasks of production lines in large factories. Despite its advantages, augmented reality...

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Veröffentlicht in:Multimedia tools and applications 2023-04, Vol.82 (10), p.15875-15901
Hauptverfasser: Izquierdo-Domenech, Juan, Linares-Pellicer, Jordi, Orta-Lopez, Jorge
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container_issue 10
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container_title Multimedia tools and applications
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creator Izquierdo-Domenech, Juan
Linares-Pellicer, Jordi
Orta-Lopez, Jorge
description With its various available frameworks and possible devices, augmented reality is a proven useful tool in various industrial processes such as maintenance, repairing, training, reconfiguration, and even monitoring tasks of production lines in large factories. Despite its advantages, augmented reality still does not usually give meaning to the elements it complements, staying in a physical or geometric layer of its environment and without providing information that may be of great interest to industrial operators in carrying out their work. An expert’s remote human assistance is becoming an exciting complement in these environments, but this is expensive or even impossible in many cases. This paper shows how a machine learning semantic layer can complement augmented reality solutions in the industry by providing an intelligent layer, sometimes even beyond some expert’s skills. This layer, using state-of-the-art models, can provide visual validation and new inputs, natural language interaction, and automatic anomaly detection. All this new level of semantic context can be integrated into almost any current augmented reality system, improving the operator’s job with additional contextual information, new multimodal interaction and validation, increasing their work comfort, operational times, and security.
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subjects Anomalies
Artificial intelligence
Augmented Reality
Computer Communication Networks
Computer Science
Data Structures and Information Theory
Industrial applications
Machine learning
Maintenance
Multimedia Information Systems
Production lines
Reconfiguration
Semantics
Situational awareness
Special Purpose and Application-Based Systems
Track 4: Digital Games
Virtual Reality
title Towards achieving a high degree of situational awareness and multimodal interaction with AR and semantic AI in industrial applications
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