CVNov 27, 2014

An Egocentric Look at Video Photographer Identity

arXiv:1411.7591v315 citations
Originality Highly original
AI Analysis

This work addresses privacy concerns for users of head-worn cameras, such as security forces and consumers, by revealing that sharing such videos can compromise anonymity, even without visible faces.

The paper tackles the problem of photographer anonymity in egocentric videos by showing that camera motion provides unique identity information, achieving over 90% recognition accuracy where random success is only 3%.

Egocentric cameras are being worn by an increasing number of users, among them many security forces worldwide. GoPro cameras already penetrated the mass market, reporting substantial increase in sales every year. As head-worn cameras do not capture the photographer, it may seem that the anonymity of the photographer is preserved even when the video is publicly distributed. We show that camera motion, as can be computed from the egocentric video, provides unique identity information. The photographer can be reliably recognized from a few seconds of video captured when walking. The proposed method achieves more than 90% recognition accuracy in cases where the random success rate is only 3%. Applications can include theft prevention by locking the camera when not worn by its rightful owner. Searching video sharing services (e.g. YouTube) for egocentric videos shot by a specific photographer may also become possible. An important message in this paper is that photographers should be aware that sharing egocentric video will compromise their anonymity, even when their face is not visible.

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