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Computer-Aided Imagery in Sport and Exercise: A Case Study of Indoor Wall Climbing
- Publication Year :
- 2018
- Publisher :
- Canadian Human-Computer Communications Society / Société canadienne du dialogue humain-machine, 2018.
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Abstract
- Proceedings of Graphics Interface 2018, Toronto, Ontario, Canada, 8-11 May 2018, 93 - 99<br />Movement artificial intelligence of simulated humanoid characters has been advancing rapidly through joint efforts of the computer animation, robotics, and machine learning communitites. However, practical real-life applications are still rare. We propose applying the technology to mental practice in sports, which we denote as computer-aided imagery (CAI). Imagery, i.e., rehearsing the task in one's mind, is a difficult cognitive skill that requires accurate mental simulation; we present a novel interactive computational sport simulation for exploring and planning movements and strategies. We utilize a fully physically-based avatar with motion optimization that is not limited by a movement dataset, and customize the avatar with computer vision measurements of user's body. We evaluate the approach with 20 users in preparing for real-life wall climbing. Our results indicate that the approach is promising and can affect body awareness and feelings of competence. However, more research is needed to achieve accurate enough simulation for both gross-motor body movements and fine-motor control of the myriad ways in which climbers can grasp climbing holds or shapes.
- Subjects :
- ta113
Motivation
Computer animation
05 social sciences
030229 sport sciences
Climbing
000 computer science
03 medical and health sciences
0302 clinical medicine
Humancomputer interaction
Motion optimization
0501 psychology and cognitive sciences
Computer animation, Motion optimization, Human-computer interaction, sports, exercise, climbing, motivation
Exercise
050107 human factors
Sports
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....af5971e130d31b3095afb7790d08766a
- Full Text :
- https://doi.org/10.20380/gi2018.13