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In the last few years, the advancement of head mounted display technology and optics has opened up many new possibilities for the field of Augmented Reality. However, many commercial and prototype systems often have a single display modality, fixed field of view, or inflexible form factor. In this paper, we introduce Modular Augmented Reality (ModulAR), a hardware and software framework designed to improve flexibility and hands-free control of video see-through augmented reality displays and augmentative functionality. To accomplish this goal, we introduce the use of integrated eye tracking for on-demand control of vision augmentations such as optical zoom or field of view expansion. Physical modification of the device's configuration can be accomplished on the fly using interchangeable camera-lens modules that provide different types of vision enhancements. We implement and test functionality for several primary configurations using telescopic and fisheye camera-lens systems, though many other customizations are possible. We also implement a number of eye-based interactions in order to engage and control the vision augmentations in real time, and explore different methods for merging streams of augmented vision into the user's normal field of view. In a series of experiments, we conduct an in depth analysis of visual acuity and head and eye movement during search and recognition tasks. Results show that methods with larger field of view that utilize binary on/off and gradual zoom mechanisms outperform snapshot and sub-windowed methods and that type of eye engagement has little effect on performance.
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Jason Orlosky
Augusta University
Takumi Toyama
Shizuoka University
Kiyoshi Kiyokawa
Nara Institute of Science and Technology
IEEE Transactions on Visualization and Computer Graphics
The University of Osaka
German Research Centre for Artificial Intelligence
Osaka Prefectural Toyonaka Support School
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Orlosky et al. (Wed,) studied this question.
synapsesocial.com/papers/6a12a07f8793652519a646a0 — DOI: https://doi.org/10.1109/tvcg.2015.2459852