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Virginia Tech

1. Ilo, Cedrick K. Feed Me: an in-situ Augmented Reality Annotation Tool for Computer Vision.

Degree: MS, Computer Science, 2019, Virginia Tech

The power of today's technology has enabled the combination of Computer Vision (CV) and Augmented Reality (AR) to allow users to interface with digital artifacts between indoor and outdoor activities. For example, AR systems can feed images of the local environment to a trained neural network for object detection. However, sometimes these algorithms can misclassify an object. In these cases, users want to correct the model's misclassification by adding labels to unrecognized objects, or re-classifying recognized objects. Depending on the number of corrections, an in-situ annotation may be a tedious activity for the user. This research will focus on how in-situ AR annotation can aid CV classification and what combination of voice and gesture techniques are efficient and usable for this task. Advisors/Committee Members: Polys, Nicholas Fearing (committeechair), Gracanin, Denis (committee member), Gabbard, Joseph L. (committee member).

Subjects/Keywords: Augmented Reality; 3D User Interface; Computer Vision Training

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APA · Chicago · MLA · Vancouver · CSE | Export to Zotero / EndNote / Reference Manager

APA (6th Edition):

Ilo, C. K. (2019). Feed Me: an in-situ Augmented Reality Annotation Tool for Computer Vision. (Masters Thesis). Virginia Tech. Retrieved from http://hdl.handle.net/10919/90897

Chicago Manual of Style (16th Edition):

Ilo, Cedrick K. “Feed Me: an in-situ Augmented Reality Annotation Tool for Computer Vision.” 2019. Masters Thesis, Virginia Tech. Accessed July 20, 2019. http://hdl.handle.net/10919/90897.

MLA Handbook (7th Edition):

Ilo, Cedrick K. “Feed Me: an in-situ Augmented Reality Annotation Tool for Computer Vision.” 2019. Web. 20 Jul 2019.

Vancouver:

Ilo CK. Feed Me: an in-situ Augmented Reality Annotation Tool for Computer Vision. [Internet] [Masters thesis]. Virginia Tech; 2019. [cited 2019 Jul 20]. Available from: http://hdl.handle.net/10919/90897.

Council of Science Editors:

Ilo CK. Feed Me: an in-situ Augmented Reality Annotation Tool for Computer Vision. [Masters Thesis]. Virginia Tech; 2019. Available from: http://hdl.handle.net/10919/90897

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