2020
DOI: 10.3390/machines8040088
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MARMA: A Mobile Augmented Reality Maintenance Assistant for Fast-Track Repair Procedures in the Context of Industry 4.0

Abstract: The integration of exponential technologies in the traditional manufacturing processes constitutes a noteworthy trend of the past two decades, aiming to reshape the industrial environment. This kind of digital transformation, which is driven by the Industry 4.0 initiative, not only affects the individual manufacturing assets, but the involved human workforce, as well. Since human operators should be placed in the centre of this revolution, they ought to be endowed with new tools and through-engineering solutio… Show more

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Cited by 49 publications
(13 citation statements)
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“…This is because sensor-based tracking technically requires intensive tracking algorithms [11] and advanced deep learning methods such as CNN [161] to boost the tracking performance and reduce latency, thus achieving the real-time feature. Finally, a model-based tracking method is applied when a 3D CAD model of the tracked object's parts are available to extract, analyze and determine the pose and position for later recognition and tracking [8,73,139].…”
Section: Classification Criteriamentioning
confidence: 99%
See 1 more Smart Citation
“…This is because sensor-based tracking technically requires intensive tracking algorithms [11] and advanced deep learning methods such as CNN [161] to boost the tracking performance and reduce latency, thus achieving the real-time feature. Finally, a model-based tracking method is applied when a 3D CAD model of the tracked object's parts are available to extract, analyze and determine the pose and position for later recognition and tracking [8,73,139].…”
Section: Classification Criteriamentioning
confidence: 99%
“…[138][139][140][141][142][143][144][145][146][147][148][149][150][151][152][153][154][155][156][157] [7,11,158-187] [8,30,188-210] [211-219]…”
unclassified
“…Not only did AR enrich the user experience by representing the simulation of any complex process using 3D virtual objects (Keller et al, 2021), but it also helped to decide if the process failed or succeeded. Consequently, it is highly used in chemical experiments (Xiao et al, 2020), maintenance assistance (Konstantinidis et al, 2020), military applications, and others, but especially for training purposes (Sorko & Brunnhofer, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…During the last decade, significant effort has been given in facilitating contemporary digital technologies into the manufacturing procedure to comply with the Industry 4.0 scheme through Vertical Networking, Horizontal Integration, Through-Engineering, and early adaptation in Exponential Technologies [1,2]. Smart systems have been already introduced into the manufacturing procedure to increase the flexibility and productivity scale in different levels of infrastructure, such as remote control through the Internet of Things (IoT) [3], predictive maintenance [4], failure recovery from non-expert personnel [5,6], low-volume or high-variance production [7], workload scheduling [8], and more. With the means mentioned above, Computer-Aided Manufacturing (CAM) systems can be significantly improved to increase their autonomy and provide real-time analysis of their subjects using Artificial Intelligence (AI).…”
Section: Introductionmentioning
confidence: 99%