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arxiv:1510.02073

Egocentric Field-of-View Localization Using First-Person Point-of-View Devices

Published on Oct 7, 2015
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Abstract

Egocentric field-of-view localization techniques match first-person visual data with reference corpora using sensor-derived head orientation information for applications in augmented reality and social interaction analysis.

We present a technique that uses images, videos and sensor data taken from first-person point-of-view devices to perform egocentric field-of-view (FOV) localization. We define egocentric FOV localization as capturing the visual information from a person's field-of-view in a given environment and transferring this information onto a reference corpus of images and videos of the same space, hence determining what a person is attending to. Our method matches images and video taken from the first-person perspective with the reference corpus and refines the results using the first-person's head orientation information obtained using the device sensors. We demonstrate single and multi-user egocentric FOV localization in different indoor and outdoor environments with applications in augmented reality, event understanding and studying social interactions.

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