Enabling live video analytics with a scalable and privacy-aware framework
ACM Transactions on Multimedia Computing, Communications, and Applications …, 2018•dl.acm.org
We show how to build the components of a privacy-aware, live video analytics ecosystem
from the bottom up, starting with OpenFace, our new open-source face recognition system
that approaches state-of-the-art accuracy. Integrating OpenFace with interframe tracking, we
build RTFace, a mechanism for denaturing video streams that selectively blurs faces
according to specified policies at full frame rates. This enables privacy management for live
video analytics while providing a secure approach for handling retrospective policy …
from the bottom up, starting with OpenFace, our new open-source face recognition system
that approaches state-of-the-art accuracy. Integrating OpenFace with interframe tracking, we
build RTFace, a mechanism for denaturing video streams that selectively blurs faces
according to specified policies at full frame rates. This enables privacy management for live
video analytics while providing a secure approach for handling retrospective policy …
We show how to build the components of a privacy-aware, live video analytics ecosystem from the bottom up, starting with OpenFace, our new open-source face recognition system that approaches state-of-the-art accuracy. Integrating OpenFace with interframe tracking, we build RTFace, a mechanism for denaturing video streams that selectively blurs faces according to specified policies at full frame rates. This enables privacy management for live video analytics while providing a secure approach for handling retrospective policy exceptions. Finally, we present a scalable, privacy-aware architecture for large camera networks using RTFace and show how it can be an enabler for a vibrant ecosystem and marketplace of privacy-aware video streams and analytics services.
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