期刊
IEEE TRANSACTIONS ON VISUALIZATION AND COMPUTER GRAPHICS
卷 28, 期 2, 页码 1443-1456出版社
IEEE COMPUTER SOC
DOI: 10.1109/TVCG.2020.3014614
关键词
Visualization; Augmented reality; Training; Maintenance engineering; Hardware; Systematics; Manufacturing; Augmented reality; industry; reviews; user interfaces; visualization
资金
- Italian Ministry of Education, University and Research under the Programme Department of Excellence [232/2016, CUP -D94I18000260001]
This work presents a systematic review of visual assets used in industrial augmented reality (iAR). The results indicate that product models, text, and auxiliary models are the most commonly used visual assets, while color coding and animations are used less frequently.
Industrial Augmented Reality (iAR) has demonstrated its advantages to communicate technical information in the fields of maintenance, assembly, and training. However, literature is scattered among different visual assets (i.e., AR visual user interface elements associated with a real scene). In this work, we present a systematic literature review of visual assets used in these industrial fields. We searched five databases, initially finding 1757 papers. Then, we selected 122 iAR papers from 1997 to 2019 and extracted 348 visual assets. We propose a classification for visual assets according to (i) what is displayed, (ii) how it conveys information (frame of reference, color coding, animation), and, (iii) why it is used. Our review shows that product models, text and auxiliary models are, in order, the most common, with each most often used to support operating, checking and locating tasks respectively. Other visual assets are scarcely used. Product and auxiliary models are commonly rendered world-fixed, color coding is not used as often as expected, while animations are limited to product and auxiliary model. This survey provides a snapshot of over 20 years of literature in iAR, useful to understand established practices to orientate in iAR interface design and to present future research directions.
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