Privacy-Preserving Image Acquisition Using Trainable Optical Kernel
Yamin Sepehri, Pedram Pad, Pascal Frossard, L. Andrea Dunbar

TL;DR
This paper introduces a trainable optical kernel that filters out sensitive information in images at the optical level, enhancing privacy without adding computational burden, and is adaptable to various applications.
Contribution
It presents the first trainable optical privacy-preserving method that removes sensitive data before digital capture, improving security over existing digital-only approaches.
Findings
Reduces 65.1% of sensitive content like gender
Loses only 7.3% of desired attributes such as smile
Reconstruction attacks are ineffective against sensitive data
Abstract
Preserving privacy is a growing concern in our society where sensors and cameras are ubiquitous. In this work, for the first time, we propose a trainable image acquisition method that removes the sensitive identity revealing information in the optical domain before it reaches the image sensor. The method benefits from a trainable optical convolution kernel which transmits the desired information while filters out the sensitive content. As the sensitive content is suppressed before it reaches the image sensor, it does not enter the digital domain therefore is unretrievable by any sort of privacy attack. This is in contrast with the current digital privacy-preserving methods that are all vulnerable to direct access attack. Also, in contrast with the previous optical privacy-preserving methods that cannot be trained, our method is data-driven and optimized for the specific application at…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Random lasers and scattering media · Digital Media Forensic Detection
MethodsConvolution
