Contextualize differential privacy in image database: a lightweight image differential privacy approach based on principle component analysis inverse
Shiliang Zhang, Xuehui Ma, Hui Cao, Tengyuan Zhao, Yajie Yu, Zhuzhu, Wang

TL;DR
This paper introduces a lightweight PCA-based method to apply differential privacy to image databases, enabling privacy preservation while maintaining statistical utility for deep learning tasks.
Contribution
It presents a novel PCA-inverse approach that privatizes entire image datasets, balancing privacy and accuracy in a transparent and interpretable manner.
Findings
Effective privacy-utility trade-off demonstrated in deep learning tasks
Images' statistical semantics retained after privatization
Indistinguishability of individual images achieved under DP
Abstract
Differential privacy (DP) has been the de-facto standard to preserve privacy-sensitive information in database. Nevertheless, there lacks a clear and convincing contextualization of DP in image database, where individual images' indistinguishable contribution to a certain analysis can be achieved and observed when DP is exerted. As a result, the privacy-accuracy trade-off due to integrating DP is insufficiently demonstrated in the context of differentially-private image database. This work aims at contextualizing DP in image database by an explicit and intuitive demonstration of integrating conceptional differential privacy with images. To this end, we design a lightweight approach dedicating to privatizing image database as a whole and preserving the statistical semantics of the image database to an adjustable level, while making individual images' contribution to such statistics…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Random Matrices and Applications
MethodsPrincipal Components Analysis
