2021
DOI: 10.48550/arxiv.2102.03513
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Privacy-Preserving Video Classification with Convolutional Neural Networks

Abstract: Many video classification applications require access to personal data, thereby posing an invasive security risk to the users' privacy. We propose a privacy-preserving implementation of single-frame method based video classification with convolutional neural networks that allows a party to infer a label from a video without necessitating the video owner to disclose their video to other entities in an unencrypted manner. Similarly, our approach removes the requirement of the classifier owner from revealing thei… Show more

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