Unterschiede
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Beide Seiten der vorigen RevisionVorhergehende ÜberarbeitungNächste Überarbeitung | Vorhergehende ÜberarbeitungLetzte ÜberarbeitungBeide Seiten der Revision |
lehre:ws18:fsm_18ws:group_g [01.02.2019 21:53] – made image smaller scc64279 | lehre:ws18:fsm_18ws:group_g [26.03.2019 10:53] – scc64279 |
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members_ : Marlena Wolfes, Christine Schikora, Sümeyye Reyyan Yildiran | members_ : Marlena Wolfes, Christine Schikora, Sümeyye Reyyan Yildiran |
keywords_ : WIP, AR, user study, augmented reality | keywords_ : WIP, AR, user study, augmented reality |
photo_img : {{ :lehre:ws18:fsm_18ws:group-g-ar-pic.jpg?&500|Photo by Daniel Frank on Unsplash}} | photo_img : {{:lehre:ws18:fsm_18ws:tempsnip.png?400|}} |
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shortdescription : This research deals with the question why AR applications are not used, although AR represents an emerging field with promising technology and developments. With our research we want to offer an overview over the complex topic and huge amount of literature, as we aim to classify AR applications based on the used technology as well as evaluation methods. Following this approach we will investigate, which evaluation methods are useful for which kind of AR applications and possibly provide methods and guidelines that could serve as guidelines for the development of AR applications and their studies. So basically, we want to make AR great again. | shortdescription : The emergence of Augmented Reality (AR) in the last decades was characterized by a shift from exclusively industrial and governmental to commercial accessibility. This includes an expansion and advancement of the underlying technologies and therefore an increasing complexity and loss of overview of available methods. For this reason, it is difficult for developers to find suitable technologies and methods for evaluating AR applications that offer high validity and reliability. To overcome this issue, a taxonomy could provide an overview over all available possibilities as well as illustrate the linkage between single elements within a larger hierarchy. However, in the literature few classifications of AR technologies and evaluation methods can be found. In our paper we propose taxonomies of AR technologies and evaluation methods and show their applicability, generalizability and expandability by analyzing state-of-the-art AR publications and the used technologies and evaluation methods. By applying different selection criteria we reduced the corpus of publications from 405 to 135 covering the years 2015 to 2017.We analyzed usage frequencies and drew comparisons to results from the literature as well as identified limitations, problems and trends in current AR research. The most preferred technologies in our analysis are represented by visual displays with head-mounted or handheld positionings, optical tracking sensors as well as touch and body motion as input types. Regarding evaluation-related results, user performance and system technology as well as task-based application tests were the most preferred evaluation areas and methods. |
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