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Situated storytelling with SLAM enabled augmented reality

Version 2 2024-09-18, 23:40
Version 1 2023-05-23, 14:37
conference contribution
posted on 2024-09-18, 23:40 authored by S Ketchell, Winyu ChinthammitWinyu Chinthammit, U Engelke
This paper addresses the feasibility of situated storytelling using Simultaneous Localisation and Mapping (SLAM) enabled augmented reality (AR) on a mobile phone. We specifically focus on storytelling in the heritage context as it provides a rich environment for stories to be told in. We conducted expert interviews with several museum and heritage sites to identify major themes for storytelling in the heritage context. These themes informed the development of an AR based storytelling application for a mobile phone. We evaluated the application in a user study and gained further insight into the factors that users appreciate in AR based storytelling. From these insights we derive several high level design guidelines that may inform future system development for situated storytelling, especially in the heritage context.

History

Publication title

Proceedings of the 17th ACM SIGGRAPH International Conference on Virtual-Reality Continuum and its Applications in Industry (VRCAI 2019)

Volume

2009

Editors

SN Spencer

Pagination

1-9

ISBN

9781450370028

Department/School

Information and Communication Technology

Publisher

Association for Computing Machinery

Publication status

  • Published

Place of publication

United States

Event title

17th ACM SIGGRAPH International Conference on Virtual-Reality Continuum and its Applications in Industry (VRCAI 2019)

Event Venue

Brisbane, Australia

Date of Event (Start Date)

2019-11-14

Date of Event (End Date)

2019-11-16

Rights statement

Copyright 2020 Association for Computing Machinery

Socio-economic Objectives

280115 Expanding knowledge in the information and computing sciences

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