Exploring Human Interaction with Projected Augmented Relief Model (PARM)

The Projection Augmented Relief Model (PARM) design comprises a physical landscape model enhanced with digital map and image content using digital projection which allows engaging interaction while presenting geographical information to people. This research explored the ways in which people gain a...

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Main Author: Arss, Nachnoer
Format: Thesis (University of Nottingham only)
Language:English
Published: 2022
Subjects:
Online Access:https://eprints.nottingham.ac.uk/68388/
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author Arss, Nachnoer
author_facet Arss, Nachnoer
author_sort Arss, Nachnoer
building Nottingham Research Data Repository
collection Online Access
description The Projection Augmented Relief Model (PARM) design comprises a physical landscape model enhanced with digital map and image content using digital projection which allows engaging interaction while presenting geographical information to people. This research explored the ways in which people gain a better understanding of landscape through projection-enhanced physical models compared to flat surface representations using an upland terrain and an urban environment as the case studies. Participants were asked to judge identical geographical information displayed on the PARM and the flat map through a series of questions. The results showed that PARM helps participants to accurately interpret the landscape of an upland terrain (the Lake District model) with an accuracy of 78.9% compared to 66.3% for the flat map. However, the accuracy of the flat map was slightly better (74.8%) than the accuracy of PARM (73.6%) for the urban terrain (University Park Campus, Nottingham). For the Lake District model, the PARM was more accurate and the response time was faster than the flat map for all types of backdrops maps and questions. For the campus model, PARM has higher accuracy for participants that have known the campus for less than 6 months, but the flat map was better for participants who have known the campus for more than 6 months. Another aspect of this study was to explore the accuracy of touch-based interaction with PARM which had been seen to be something viewers expected from previous studies, as reported in Priestnall et al (2017) a finger tracking program was proposed based on a modified algorithm from an existing program developed for the Microsoft Kinect sensor. The program was able to detect and record fingertip coordinates up until the point where the finger merged with the physical model, which was taken as the point of touch. The accuracy of fingertip detection was tested using 8 target points on each of the PARM models (Lake District and campus). Results showed a similar offset, averaged over 50 participants for both models, of 2.48 cm for the Lake District model and 2.58 cm for the campus model. The implications of this level of accuracy between the two models are discussed but generally speaking it was considered that this technological solution would not offer a satisfactory user experience.
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format Thesis (University of Nottingham only)
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language English
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spelling nottingham-683882022-07-31T04:41:15Z https://eprints.nottingham.ac.uk/68388/ Exploring Human Interaction with Projected Augmented Relief Model (PARM) Arss, Nachnoer The Projection Augmented Relief Model (PARM) design comprises a physical landscape model enhanced with digital map and image content using digital projection which allows engaging interaction while presenting geographical information to people. This research explored the ways in which people gain a better understanding of landscape through projection-enhanced physical models compared to flat surface representations using an upland terrain and an urban environment as the case studies. Participants were asked to judge identical geographical information displayed on the PARM and the flat map through a series of questions. The results showed that PARM helps participants to accurately interpret the landscape of an upland terrain (the Lake District model) with an accuracy of 78.9% compared to 66.3% for the flat map. However, the accuracy of the flat map was slightly better (74.8%) than the accuracy of PARM (73.6%) for the urban terrain (University Park Campus, Nottingham). For the Lake District model, the PARM was more accurate and the response time was faster than the flat map for all types of backdrops maps and questions. For the campus model, PARM has higher accuracy for participants that have known the campus for less than 6 months, but the flat map was better for participants who have known the campus for more than 6 months. Another aspect of this study was to explore the accuracy of touch-based interaction with PARM which had been seen to be something viewers expected from previous studies, as reported in Priestnall et al (2017) a finger tracking program was proposed based on a modified algorithm from an existing program developed for the Microsoft Kinect sensor. The program was able to detect and record fingertip coordinates up until the point where the finger merged with the physical model, which was taken as the point of touch. The accuracy of fingertip detection was tested using 8 target points on each of the PARM models (Lake District and campus). Results showed a similar offset, averaged over 50 participants for both models, of 2.48 cm for the Lake District model and 2.58 cm for the campus model. The implications of this level of accuracy between the two models are discussed but generally speaking it was considered that this technological solution would not offer a satisfactory user experience. 2022-07-31 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en cc_by https://eprints.nottingham.ac.uk/68388/1/Thesis_NachnoerArss.pdf Arss, Nachnoer (2022) Exploring Human Interaction with Projected Augmented Relief Model (PARM). PhD thesis, University of Nottingham. Projected Augmented Relief Models Physical 3D relief model augmented reality landscape visualization terrain visualization landscape representation supporting technologies Human Interaction Finger Point Pointing Interaction Human Spatial Cognition Upland Rural Urban Terrain Kinect Sensor Sandbox Experimentation Experimental Setup Participant
spellingShingle Projected Augmented Relief Models
Physical 3D relief model
augmented reality landscape
visualization
terrain visualization
landscape representation supporting technologies
Human Interaction Finger Point Pointing Interaction Human Spatial Cognition Upland Rural Urban Terrain Kinect Sensor
Sandbox Experimentation
Experimental Setup Participant
Arss, Nachnoer
Exploring Human Interaction with Projected Augmented Relief Model (PARM)
title Exploring Human Interaction with Projected Augmented Relief Model (PARM)
title_full Exploring Human Interaction with Projected Augmented Relief Model (PARM)
title_fullStr Exploring Human Interaction with Projected Augmented Relief Model (PARM)
title_full_unstemmed Exploring Human Interaction with Projected Augmented Relief Model (PARM)
title_short Exploring Human Interaction with Projected Augmented Relief Model (PARM)
title_sort exploring human interaction with projected augmented relief model (parm)
topic Projected Augmented Relief Models
Physical 3D relief model
augmented reality landscape
visualization
terrain visualization
landscape representation supporting technologies
Human Interaction Finger Point Pointing Interaction Human Spatial Cognition Upland Rural Urban Terrain Kinect Sensor
Sandbox Experimentation
Experimental Setup Participant
url https://eprints.nottingham.ac.uk/68388/