Personal Privacy Protection via Irrelevant Faces Tracking and Pixelation in Video Live Streaming
Jizhe Zhou, Chi-Man Pun

TL;DR
This paper introduces FPVLS, an automated face pixelation method for live streaming videos that improves accuracy and efficiency by tracking and refining irrelevant faces, addressing labor-intensive privacy protection tasks.
Contribution
The paper proposes a novel online face pixelation framework with a new clustering algorithm and trajectory refinement for real-time privacy filtering during live streams.
Findings
Achieves high accuracy in face pixelation during live streaming.
Operates in real-time with efficient processing.
Effectively reduces over-pixelation issues.
Abstract
To date, the privacy-protection intended pixelation tasks are still labor-intensive and yet to be studied. With the prevailing of video live streaming, establishing an online face pixelation mechanism during streaming is an urgency. In this paper, we develop a new method called Face Pixelation in Video Live Streaming (FPVLS) to generate automatic personal privacy filtering during unconstrained streaming activities. Simply applying multi-face trackers will encounter problems in target drifting, computing efficiency, and over-pixelation. Therefore, for fast and accurate pixelation of irrelevant people's faces, FPVLS is organized in a frame-to-video structure of two core stages. On individual frames, FPVLS utilizes image-based face detection and embedding networks to yield face vectors. In the raw trajectories generation stage, the proposed Positioned Incremental Affinity Propagation…
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