Abstract:
During the last decade, there has been a surge in research studies exploring the adoption of Augmented Reality (AR) in educational settings. Within these multiple researc...Show MoreMetadata
Abstract:
During the last decade, there has been a surge in research studies exploring the adoption of Augmented Reality (AR) in educational settings. Within these multiple research studies, AR's capability to extend the teaching and learning environment with augmented 3D learning objects with enhanced interactive capabilities have been demonstrated. This new technology has not been widely adopted in the mainstream but with the recent unprecedented circumstances of COVID-19, there has been an increasing societal willingness to adopt these technologies. AR has been a desirable technology due to its inherent touchless nature which facilitates social distancing at this time but AR applications crucially offer so much more. They can provide interactive functionality through augmentation of the teaching and learning environment within an immersive user experience including 3D interactions with learning objects, gestures, hand interaction, tangible and multi-modal interaction. This paper presents the results of a review of touchless interaction studies in educational applications and proposes the implementation of real-time touchless hand interaction within kinesthetic learning and utilization of machine learning agents. The architecture of two AR applications with real-time hand interaction and machine learning agents are demonstrated within this paper enabling engaged kinesthetic learning as an alternative learning interface.
Date of Conference: 17 May 2021 - 10 June 2021
Date Added to IEEE Xplore: 28 June 2021
ISBN Information:
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- IEEE Keywords
- Index Terms
- Intelligence Agencies ,
- Real-time Interaction ,
- Augmented Reality Learning ,
- Interactive ,
- Machine Learning ,
- Learning Environment ,
- Learning Objectives ,
- Real-time Machine ,
- Educational Applications ,
- Augmented Reality Applications ,
- Multimodal Interaction ,
- Real-time Learning ,
- Virtually ,
- Direct Interaction ,
- Artificial Neural Network ,
- Learning Techniques ,
- Resource Constraints ,
- Technical Skills ,
- Hand Tracking ,
- Virtual Objects ,
- Leap Motion ,
- Smartphone ,
- Gesture Recognition ,
- Hand Gestures ,
- Augmented Reality Technology ,
- Hands-on Learning ,
- Individual Learning ,
- Sign Language
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Intelligence Agencies ,
- Real-time Interaction ,
- Augmented Reality Learning ,
- Interactive ,
- Machine Learning ,
- Learning Environment ,
- Learning Objectives ,
- Real-time Machine ,
- Educational Applications ,
- Augmented Reality Applications ,
- Multimodal Interaction ,
- Real-time Learning ,
- Virtually ,
- Direct Interaction ,
- Artificial Neural Network ,
- Learning Techniques ,
- Resource Constraints ,
- Technical Skills ,
- Hand Tracking ,
- Virtual Objects ,
- Leap Motion ,
- Smartphone ,
- Gesture Recognition ,
- Hand Gestures ,
- Augmented Reality Technology ,
- Hands-on Learning ,
- Individual Learning ,
- Sign Language
- Author Keywords