Transforming faces into video stories -- VideoFace2.0
Branko Brklja\v{c}, Vladimir Kalu\v{s}ev, Branislav Popovi\'c, Milan, Se\v{c}ujski

TL;DR
VideoFace2.0 is an advanced system for real-time face detection, re-identification, and cataloging in videos, enabling efficient creation of structured video stories for media analysis and machine learning dataset generation.
Contribution
The paper introduces VideoFace2.0, a near real-time face re-identification system that combines detection, recognition, and passive tracking, with significant accuracy improvements over previous methods.
Findings
Achieves 18-25 fps on consumer notebooks.
Reduces false identities by 73%-93%.
Proves effectiveness in media analysis and dataset creation.
Abstract
Face detection and face recognition have been in the focus of vision community since the very beginnings. Inspired by the success of the original Videoface digitizer, a pioneering device that allowed users to capture video signals from any source, we have designed an advanced video analytics tool to efficiently create structured video stories, i.e. identity-based information catalogs. VideoFace2.0 is the name of the developed system for spatial and temporal localization of each unique face in the input video, i.e. face re-identification (ReID), which also allows their cataloging, characterization and creation of structured video outputs for later downstream tasks. Developed near real-time solution is primarily designed to be utilized in application scenarios involving TV production, media analysis, and as an efficient tool for creating large video datasets necessary for training machine…
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Taxonomy
TopicsFace recognition and analysis · Face and Expression Recognition · Speech and Audio Processing
MethodsFocus
